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Ho, Chih-Hsing --- "Challenges of the EU General Data Protection Regulation for Biobanking and Scientific Research" [2017] JlLawInfoSci 5; (2017) 25(1) Journal of Law, Information and Science 84


Challenges of the EU General Data Protection Regulation for Biobanking and Scientific Research

CHIH-HSING HO[*]

Abstract

This paper discusses challenges arising from the application of the EU General Data Protection Regulation (‘GDPR’) in the context of biobanking and biomedical research. Medical and health research has increasingly relied on processing and linking vast amounts of genetic- and health-related data. The traditional, highly-specific consent form and anonymisation required for privacy protection may not be appropriate for data-intensive longitudinal population-based research. After long debates and lobbying efforts from the health and research communities in the EU, the GDPR has been revised to adopt a more research-friendly approach by including several derogations for consent and processing of data for secondary purposes. However, challenges remain in that the scope of scientific exemptions is as yet unclear, and the rules adopted by EU Member States have yet to be harmonised. Setting up a more accountable governance framework that can work with existing ethics review mechanisms to allow for biomedical research, especially when privately funded research entities are involved, poses questions worthy of further analysis. This paper elucidates these challenges and attempts to provide a suitable resolution for making exemptions so that research can be carried out in the public interest.

Introduction

On 14 April 2016, after a long process of debate and negotiation, the European Parliament adopted the European Union (‘EU’) General Data Protection Regulation,[1] a reform proposed by the European Commission in 2012 to address EU Member States’ fragmented EU data protection rules derived from the Data Protection Directive (95/46/EC).[2] The main purpose of this GDPR is to set out an EU-wide legal framework for the protection of personal data that at the same time facilitates the free flow of such data within the European Union. The GDPR’s predecessor, the EU Directive 95/46/EC, defined the basic elements of data protection, upon which EU Member States enacted individual national legislation. Contrastingly, the GDPR will apply directly to each Member State and will override national data protection laws in the EU. The GDPR will be applicable two years after adoption, and will be effective from 25 May 2018.[3]

The GDPR sets forth a number of key changes to the EU Data Protection Directive and several principles relating to enhanced rights for individuals who are data subjects: for example, the right to be forgotten; the right to data portability; the processing of personal data; the obligations of data controllers and processors, such as the mandatory appointment of a Data Protection Officer; and carrying out mandatory data protection impact assessments. The GDPR stipulates that personal data need to be processed ‘lawfully, fairly, and in a transparent manner in relation to the data subject’.[4]

In addition, in order to reinforce data subjects’ control over their personal data, in the GDPR proposal, specific consent was introduced as a default consent model for data collection and therefore re-consent was required for data processing for different purposes apart from those for which data was collected.[5] This gave rise to serious concerns within scientific communities in the EU that the proposed GDPR would have devastating impacts on scientific research, which relies heavily on access to data for prospective unknown studies, and would hamper the future development of data-intensive health research.

Several European medical and health research organisations, such as the Medical Sciences Committee of Science Europe, the Wellcome Trust, the Public Health Genomics (‘PHG’) Foundation, and the Biobanking and BioMolecular Resources Research Infrastructure – European Research Infrastructure Consortium (‘BBMRI-ERIC’) submitted position papers on the GDPR proposal in order to reconcile the public interest in research with a broader framework of individual rights to privacy. The arguments in these position papers elaborated the common concern with the draft GDPR’s lack of distinction between the use of data for scientific purposes and other forms of processing data, such as personal profiling of data subjects or direct marketing by commercial entities.[6] These research communities urged EU policy makers to be aware of the possibility that the proposed GDPR may hinder patients’ interests. They proposed the derogation for consent and reuse of data for scientific research purposes, arguing that existing ethical safeguards, such as the approval from ethics committees, guidelines and codes of conduct, were already adopted as general practices in medical and health research prior to the GDPR’s enactment.[7]

After prolonged negotiations, in June 2015, the Council of the European Union took a more research-friendly approach by including special provisions for scientific exemptions in the draft GDPR.[8] However, what impact the GDPR will have on scientific research, especially on existing biobanking activities, remains to be discussed. For genomics studies, biobanks have been deemed a useful part of the infrastructure for facilitating wide ranging, population-based prospective longitudinal studies. Such biorepositories usually collect extensive samples and data, including medical, health and life data, and make these available to researchers who apply for access for unspecified future research purposes.[9] In order to maximise the utility of samples and data stored in biobanks, and to reduce the costs of re-contacting participants, broad consent has replaced specific consent for data collection in the biobank practices.[10] The extent to which this particular form of consent to governance is compatible with the GDPR or falls within special provisions for scientific research is worth further analysis.

In addition, the GDPR specifies that pseudonymised data must be treated as personal data, so further data processing requires consent or legitimate purposes.[11] The GDPR may contradict the general practice in medical research that treats pseudonymised data as anonymous and permits third parties, who do not possess the key code, to access data for the necessary linkage in the long-term follow-up research.

This paper focuses on challenges arising from the GDPR, particularly those relating to the consent and anonymisation approach for data-intensive biomedical research. It analyses the GDPR’s conditions and elucidates why some rules in the GDPR may not be suitable in the context of biomedical research, given the different types of risks involved and the nature of the scientific studies. Further, this paper illustrates the remaining challenges for harmonisation for the GDPR after the adoption of the scientific exemptions, including the involvement of privately funded research entities in a broad interpretation of ‘research’. Finally, it attempts to provide a possible resolution to address these challenges to balance the requirements of data protection and the need to carry out scientific research for the benefit of the public.

1 Biobanking and Biomedical Research in Context

In recent years, due to rapid developments in information technology and the application of big data techniques, the general practice in biomedical research has changed significantly. Personal data concerning health can be aggregated through data mining techniques and linkages to yield valuable resources for further use and analysis. Such data includes data collected from electronic health records (‘EHRs’), electronic medical records (‘EMRs’), clinical trial data, and genetic, genomic and other life-related data. As most complex diseases and cancers that affect large populations are typically caused by a combination of genetic and environmental factors, rather than individual genes alone, scientists generally recognise that studying the population genome, that is, the entirety of a species’ genes across whole populations, is necessary to understand fully the complex and subtle interactions between incidences of disease, genes, and the environment.[12] Such population studies in genomics require extensive collections of high-quality tissue samples, and have fuelled the drive for the establishment of large-scale population biobanks.[13]

1.1 The Features of Biobanks

The collection and storage of human tissue samples for medical research has a decades-long history. However, biobanks are a sophisticated technological innovation, which facilitates the continuous collection of all types of human samples and making of linkages with associated epidemiological, clinical and research data.[14] The wide use of biobanks and associated data creates difficulties, as the different types of collections with different structures and purposes may give rise to different technological, ethical and legal considerations.[15] According to OECD Guidelines, the extent and type of consultations necessary for the establishment of human biobanks must take into consideration the nature, purpose and scope of biobanks. The greater the variety of invited participants, the more numerous the tissue samples and data to be collected, which may cause greater risks in samples and data sharing.[16]

Although a number of significant variables, such as the size, scale and nature of the samples, will influence the range of biobank activities, including recruitment, consent practices and governance arrangements, human biobanks typically share a number of common features.[17] For instance, they usually anticipate unspecified future research and so have an ongoing and open-ended nature that challenges the traditional practice of specific informed consent. Furthermore, in order to link collected biospecimens with phenotypic data, the banked samples and data may need to be re-identifiable by biobank custodians even though that data may have been encrypted and the means of identification removed. Since it is not possible to ensure that the samples and data are completely secure against identification, appropriate mechanisms need to be set for data management to minimise the risk of individuals being identified.[18] In addition, as biobanks are more concerned with the public benefit for future generations than with the individual benefit of participants themselves, they focus on the common good and as a result their proper governance needs to balance individual and collective interests.

The nature of biobank collections can be classified in terms of the purely prospective integrations of pre-existing collections, or some combination thereof. In terms of the extent to which data linkage is possible, types of biobanks may be categorised depending on the coding system or anonymisation procedures used for data protection. If funding sources and business models are taken into account, the categorisation may be further refined into distinctions between public or private, commercial or non-commercial. Different types of biobanks require different governance frameworks for issues regarding consent and privacy. For instance, whether or not a biobank is commercially oriented may have a significant influence on people’s willingness to participate, as the business model of profit maximisation may not be accepted by a participant who might otherwise wish to contribute samples to a public, non-commercial biobank.

Biobanks may also be distinguished from other collections of biospecimens, created for research or other purposes but also used for research, even though the boundaries between the biobanks and these kinds of collections may not be easily drawn. For instance, the genetic research database used for the International HapMap Project[19] stored de-identified genetic information compiled from multiple donors. Even though the samples and cell lines used by the project could be identified as coming from one of the four populations taking part in the study, they were not linked to any individual participant. This is very different from a biobank in which re-identification and data linkage are necessary. Making these distinctions not only helps to clarify the term ‘biobanking’ but also assists in elucidating a more appropriate governance framework for data protection in the context of biomedical research.

1.2 Substantial Public Interest

Biobanks provide scientific researchers with important resources in two main areas: the interaction between genetic factors underlying common complex diseases and the environment, and the translation of biomedical research into diagnostic and therapeutic applications through pharmacogenomics in pursuit of personalised medicine.[20] This ultimately provides an improvement in public health.

In the past, medical care was unable to take account of an individual’s genetic variability. Instead it focused on standards of care based on epidemiological studies of large cohorts. Traditionally, clinical diagnosis and treatments were based on patients’ symptoms and their medical and family histories. As such, medical treatment was reactive rather than prospective. In other words, clinics offered medication only after symptoms appeared.

Recent advances in genomics have introduced a new means of identifying and understanding certain diseases, especially in terms of the functioning of genes and their impact on the development of complex diseases. The HapMap project has laid the groundwork for deepening our understanding of similarities and differences in genetic makeup at an individual level, and made possible for the application of a new tool, Genome-Wide Association Studies[21] (‘GWAS’), to examine how one’s genome may affect a person’s susceptibility to diseases.

GWAS could have a significant impact on medical care, especially the development of precision medicine, for which it is important to understand how genetic variations contribute to common, complex diseases. Studies are expected to benefit health management when it is widely applied to medical care. They sit alongside other innovative technologies, so that health professionals can tailor prevention programs to patients according to their genetic makeup, to lower health management costs to a greater extent.[22]

These rapid developments in biomedical studies have turned traditional medical research into a data-intensive field. This paradigm shift encourages cross-border exchange of human biological resources and associated data. A well-tailored data protection framework, as it has been argued by many EU health research communities, will be able to ease access to, and the sharing of, data for scientific research purposes, and enable further biomedical innovation. This will bring greater benefit and wellbeing to patients and citizens.

As it is widely recognised that personal data is of critical importance in maintaining and advancing scientific research, the EU medical and health communities have demonstrated a strong support for derogations set out in the proposed GDPR to continue performing outstanding research. In addition, since scientific and medical research aims at fostering knowledge and developing new treatments to prevent or cure disease, the BBMRI-ERIC, along with other scientific networks, urged EU institutions to consider scientific research as being of substantive public interest.[23] The adoption of scientific exemptions is essential to make a necessary distinction between data processing for research purposes and other purposes that lack a substantial public interest.

Reconciling patients’ interests and individual rights to privacy has been of foremost priority for many EU medical and health research communities. In the position paper of Science Europe, EU institutions were recommended to set up a governance framework to ensure privacy protection, while at the same time facilitating access to data and medical research across Europe.

Concerns were raised that the proposed GDPR did not proportionately reconcile these rights, nor appropriately distinguish between the commercial and academic environments in which medical and health research are performed.[24] Similarly, the term ‘high public interest’,[25] used in the proposed GDPR for the processing of sensitive data, had been criticised in the BBMRI-ERIC position paper as constituting an unnecessary politicisation of research.[26] A change of the wording to ‘public interest’ was recommended by the scientific communities.[27] A comparable request for derogations can be found in data processing that involved psuedonymisation under the ‘highest technical standards’. According to the BBMRI-ERIC position paper, the change of the wording to ‘reasonably high’ standard was strongly recommended, in order to avoid unnecessary conditions set up under the GDPR that will have a detrimental impact on scientific discovery.[28]

2 Consent

The GDPR provides a clear definition of consent. Article 4(11) stipulates that a valid consent obtained from the data subject needs to be ‘freely given, specific, informed and unambiguous’. In addition, such consent must take the form of a clear affirmative action, indicating the data subject’s agreement to the processing of his or her personal data. This definition of consent is based on the dominant specific consent model that brings challenges to biobanking activities, which mainly rely on broad consent. When consent was obtained for data collection for the establishment of existing biobanks, it was not possible to predict what kinds of research would be possible in the future. The same is true of new collections; we cannot anticipate all their potential future research uses. Moreover, treating biobanks as an important infrastructure makes them valuable resources for research. They function like bio-libraries or bio-repositories, continuing the collection and storage of human specimens and associated data in order to make them available for unspecific future research. As a result, it has been recognised that the traditional specific consent model is not practical for biobanking operations. Broad consent involves consenting to a general governance framework rather than a specific research purpose. In biomedical practice, this broad consent provides an alternative and legitimate solution to longitudinal population-based research, which is reliant on vast amounts of data being processed and further linked for later research.

Broad consent, used frequently in biobanking, is slightly different from blanket (or open) consent. The latter refers to permission given by the data subject to further processing and reuse of his or her specimens and associated data for any nonspecific future research purpose.[29] Considering that re-consent costs are simply too high and burdensome for participants to be re-contacted every time there is a need to obtain their consent for a new research purpose, blanket consent has been used to replace specific informed consent in order to facilitate medical and health research. Concerns about open consent usually focus on the absence of continuous supervision of the reuse of tissue samples and data after consent has been given at the time of data collection. Broad consent is a compromise between the two ends of the consent spectrum: open consent and traditional specific informed consent. Broad consent authorises the use of samples for unspecific research purposes, but it relies on ethics (or user) committees to review applications for access to biobanks for data processing or linkage. In practice, review by ethics committees focuses on the governance framework provided by the biobanks.[30] Such a governance framework provides guidance for various biobank stakeholders, and covers the rules and guidelines on data protection, confidentiality and the criteria for access. This provides an important safeguard to supplement the broad consent model. The UK biobank and many biorepositories associated with the BBMRI Consortium have adopted broad consent models as default mechanisms for practicing consent in the context of biobanking research. It is hoped that a proper balance will be reached between respect for individual autonomy and facilitating medical research.

In the proposed draft GDPR, the broad consent model had not yet been considered a valid form of consent, according to the strict definition of consent set out in the provisions. This caused major concerns for medical and health communities in the Europe about the legitimacy of existing biobanking projects and future biobank activities. After a long process of discussion and lobbying by scientific communities, in the final version of the GDPR the legislators recognised that it would be impractical to use specific consent in longitudinal studies and they took a more research-friendly position by including scientific exemptions in the GDPR. In recital 33 of the GDPR, it is acknowledged that it is often not possible to identify fully the purpose, use and processing of personal data for scientific research at the stage of data collection. As a result, data subjects should be permitted to give their consent to certain broad areas of scientific research, rather than being asked to specifically consent to particular purposes, so long as such practice of consent complies with ethical standards for scientific research.[31] Given this flexibility in consent requirements, personal data can now be repurposed for secondary use, which is approved by ethics committees. There is no need to obtain further consent for additional processing of data once broad consent has been given by data subjects at the time of data collection.

3 Processing of Personal Data

3.1 The Definition of Personal Data

As both the EU Directive 95/46/EC and the GDPR govern only the collection and processing of ‘personal data’, any information not so defined is therefore outside of the scope of the data protection rules, and researchers need not pay heed to data protection principles. As a result, how personal data is defined is critical to the appropriate application of the GDPR.

According to article 4 (1) of the GDPR, personal data refers to ‘any information relating to an identified or identifiable natural person (‘data subject’)’.[32] It stipulates that an identifiable person is

one who can be identified, directly or indirectly in particular by reference to an identifier such as a name, an identification number, location data, online identifier or to one or more factors specific to the physical, physiological, genetic, mental, economic, cultural or social identity of that person.[33]

The definition of personal data in Directive 95/46/EC remains mostly unchanged under the GDPR, however, several new identifiers, such as location data, online identifiers, and genetic data have been explicitly included in the GDPR, which may result in additional compliance obligations for some associated organisations. In addition, the GDPR maintains the existing distinction between sensitive data and non-sensitive data, and makes sensitive data a special category of personal data subject to additional protection.[34] The categories of the sensitive data are largely the same as that covered by the EU Directive 95/46/EC. Nevertheless, as a result of consideration of scientific developments, the GDPR now enlarges its categories by explicitly including genetic and biometric data as sensitive personal data.[35]

3.2 Processing of Sensitive Personal Data

The processing of sensitive personal data, like genetic and health data, is prohibited under the GDPR, except in certain defined circumstances. Article 9(2) of the GDPR enumerates the justifications for processing of sensitive data. This list of legal processing is exhaustive, and the processing of sensitive data outside of the enumerated situations is considered illegal under the GDPR.

One of the required conditions is the explicit consent of the data subject.[36] As mentioned earlier, that consent, according to the definition in the GDPR, must be given freely, and must be specific, informed and unambiguous.[37] In addition, the consent needs to satisfy the ‘purpose limitation’ requirement. As a result, consent to processing sensitive data cannot be permitted for prospective unknown purposes, as is the practice under the broad consent model in biobanking research. However, the GDPR permits derogations for research, and Member States can delineate under what circumstances the prohibition against processing sensitive data may not be lifted by the specific consent requirement.[38]

The GDPR also permits the processing of sensitive data when it is in the public interest for reasons of public health.[39] Examples of the public health exemption include ‘protecting against serious cross-border threats to health’ or ‘ensuring high standards of quality and safety of health care and of medicinal products or medical devices’.[40] Under these circumstances, processing of sensitive data can be permitted if it is on the basis of EU or Member State law that provides suitable measures to safeguard the rights and freedoms of the data subject.[41]

In addition, the justifications apply when such processing of sensitive data is necessary for scientific research purposes.[42] Under this scenario, the processing needs to be subject to appropriate safeguards, which must ensure that technical and organisational measures are in place to comply with the principle of data minimisation.[43] According to the GDPR, such measures may include techniques of pseudonymisation. However, if anonymisation rather than pseudonymisation can satisfy the purpose of processing sensitive data, that technique should prevail.[44]

Furthermore, under the GDPR, there can be limitations on a data subject’s rights, including the right to access, the right to rectification, the right to restriction of processing and the right to object, as scientific exemptions are applied to the processing of sensitive data.[45] However, such exemptions are subject to the same conditions and safeguards as stipulated in the GDPR to the extent that such rights are likely to render impossible or seriously impair the ends of scientific research, and such derogations are necessary for the fulfilment of these purposes.[46] Nevertheless, the scope of derogations is not without limitation. According to the GDPR, Member States have discretion to maintain or introduce further conditions, including limitations for processing several special categories of sensitive personal data, such as genetic data, biometric data or data concerning health.[47]

3.3 Anonymisation and Pseudonymisation

As the EU Directive 95/46/EC and the GDPR apply only to personal data, data that can no longer be connected to, or under any circumstance be associated with a particular individual, are considered anonymised data that falls outside of the application of data protection rules. As the anonymisation of data is irreversible, it cannot be used to identify data subjects by any method. Thus the processing and reuse of such data do not need to comply with data protection principles. Several researchers have studied the effectiveness of various anonymisation techniques. In reality, it may not be possible to claim any technique is absolutely effective at anonymisation, especially considering the advances in big data applications that make it easier to single out a particular individual through data mining. Under the GDPR, however, data can be considered anonymised so long as such data can no longer identify an individual by further processing of that data, or by processing it together with any other available information.[48]

Pseudonymisation is a technique used for processing of personal data, under which information can no longer be attributed to a specific data subject without the use of additional information. That additional information must be kept separately and subject to appropriate measures to ensure that it cannot be used to help identify the data subject.[49] According to this definition, pseudonymised data can be considered to have had personal identifiers removed and kept separately, so the data can no longer identify an individual directly without the inclusion of an identifier key or algorithm. As it is still possible for the identity of the data subject to be re-connected to the pseudonymised data, such data is explicitly recognised by the GDPR as a type of personal data.

The Medical Sciences Committee of Science Europe (‘MED Committee’) recommended that EU institutions take into consideration the adoption of a risk-managed approach in the case of pseudonymised data, to ensure that the regulatory burden on research is kept to a minimum.[50] According to its position paper, the MED Committee suggested that the GDPR should exclude pseudonymised data for medical and health research from the category of personal data, so long as there are appropriate technical safeguards in the research practices to minimise the risk of re-identification. In biomedical research, the technique of pseudonymisation is used frequently in population-based research and large-scale biobanks. These research types involve the longitudinal collection of a large amount of participants’ data, which must be further processed or cross-linked to other databases for future unspecific research. Pseudonymisation makes these databases an extremely valuable research infrastructure as it permits cross-linkage between different datasets, such as national health registries or medical and life data, in order to discover the causes of diseases. This type of population-based research has been practiced impressively in many jurisdictions in Europe, for example, by the National Institute of Statistics in Nordic countries, the Scottish Informatics Programme (‘SHIP’) in Scotland, the UK Biobank, and the UK Longitudinal Study Center in England.[51] Although technically speaking, pseudonymisation may create a greater risk of re-identification than some anonymisation techniques, several safeguards and mechanisms, such as reviews from ethics committees for access to databases, have been employed to protect participants in biomedical research.

Foreshadowing that this suggestion might not be accepted by legislators (a correct assumption, as it turned out), the MED Committee’s position paper continued to highlight the importance of EU institutions making amendments that recognise the existing, well-established protocols for the responsible use of pseudonymised data in medical and scientific research. The aim was to ensure that the regulatory requirements for treating pseudonymised data as personal data are proportionate to a relative lower risk of re-identification. In addition, the Committee recommended a case-by-case approach, along with appropriate oversight, clear procedures and suitable controls for using decryption keys with pseudonymised data for re-identification purposes in scientific studies.[52] The Committee further suggested that this approach ought to be built on the existing safeguards for processing pseudonymised data that have been commonly adopted in scientific research communities across Europe.

4 Challenges to Harmonisation and the Application of Scientific Exemptions

4.1 Privately Funded Research

Even though the medical and health research communities have been delighted to see EU institutions take a more open position to welcoming data-intensive research, several challenges remain in the application of scientific exemptions under the GDPR. The first, and most important, concerns the unclear scope of scientific exemptions and their interpretation. According to recital 159, the GDPR adopts a broad definition of ‘research’ regarding the processing of personal data that includes not only fundamental and applied research, but also privately funded research.[53] Given the broad interpretation of research, there is little room to distinguish between research carried out by public or private entities, so long as ‘data processing’ satisfies the purpose of scientific research. It brings an immediate challenge to the issue of privately funded research. For example, it is unclear whether commercial market research may be classified as scientific research and therefore be covered by the exemptions under the GDPR.[54]

Generally, under the GDPR, the processing of personal data for secondary uses or purposes cannot be permitted except under such circumstances that the processing is compatible with the purposes for which the personal data were initially collected.[55] However, this restriction on secondary processing of personal data may be exempted for data controllers who process personal data for the purpose of research.[56] Article 5(1)(b) of the GDPR reverses this general presumption on the purpose of limitation. Under such an exemption, where technical and organisational measures are in place, secondary uses of data are possible even without considering if the purpose of the process is compatible with the original purpose for which data were collected.[57] This raises concerns about the consent given by the data subjects, as they might not be willing to give the same consent had they known that the entities of the data controllers or processors would change in the future.

Several studies have demonstrated the public’s concerns with commercial access to health data. A survey carried out by Ipsos MORI, a social research institute, for the Royal Statistical Society reveals that only between four and seven per cent of the respondents agree that they have a high level of trust in the appropriate use of personal data by commercial entities, such as internet, insurance and telecommunications companies.[58] This study further illustrates that among two of the top three reasons for the respondents to stop using a company are the loss or sale of personal data—but that far outweighs other reasons such as charging more than other competitors or damaging the environment.[59] On the contrary, the poll showed relatively low opposition (17 per cent) for the government sharing anonymised data among universities and academic organisations for the purpose of public funded research.[60]

Subsequently, a more sophisticated survey was commissioned by the Wellcome Trust to further investigate ways in which the public would distinguish between different types of commercial access, and whether different types of data and data users would be factors influencing attitudes towards commercial access to health data for the public.[61] In so doing, it is hoped that better safeguards can be established to ensure public trust in the sharing of health data with private entities for research purposes. The report found that the public regards there to be a hierarchy of acceptable commercial entities. For those private research companies working closely with the National Health Service (‘NHS’) in the UK, the public has a relatively higher trust and more acceptance attitude towards their data processing activities.[62] Far less popular are pharmaceutical companies with agendas that are seen as being at odds with the public interest. Even though the role of pharmaceutical companies in the development of new therapies has been gradually recognised, most people still prefer that certain kinds of regulations should be used to place checks on these companies, due to concerns with their profit motive.

In the survey, some companies are reported as falling short of public expectations. For example, the investigation showed that participants do not want insurance companies to have access to their health data at all. This public distrust is caused by the health industry’s business operations: charging high rates but paying out little or nothing, which is perceived by the general public as operating contrary to the basic principle of the public health service.[63] Similarly, marketing companies have also been listed as non-favoured entities for access to personal data. This demonstrates the general concerns about online marketing platforms’ privacy intrusions and how individuals might have been targeted for direct marketing through big data application.[64] With regards to third party access, the survey illustrates public unease with passing data on to others beyond the original use, especially fear that data subjects will lose control when third party access is allowed but proper safeguards are yet to be established.[65] Indeed, commercial companies frequently seek to profit from re-selling data. However, most of these companies have inadequate mechanisms to ensure transparency and data security.

As the GDPR adopts a broad definition of research and explicitly includes privately funded research in such a category, the scientific research exemptions will apply to commercial entities and pharmaceutical companies for data processing and re-use. Mitigating public concern to ensure that the common good is protected and to ease the challenges that accompany the application of the scientific exemptions is crucial. In addition to relying on ethics committee review as a safeguard mechanism for data access, it is necessary to increase transparency and accountability in the governance framework for processing data transfer and access applications. A proper notification system may help build up a trust relationship between data controllers and data subjects, and needs to be included in the overall data flow supervision. Finally, in the broad consent mechanism, an opt-out option is required so that data subjects will have an opportunity to further control (even though passively) the use of, and access to, their data and to decide if they would prefer to withdraw from research projects when commercial entities are involved.

4.2 Designing a Compliance Framework for Research

In addition to the uncertain interpretation of the scope of exemptions, another challenge for the GDPR lies in how to design an appropriate compliance framework for carrying out research. A solid safeguard for data processing requires suitable technical and organisational measures that can be well-designed into an overall framework, to balance respect for privacy with the need to perform research. Under certain circumstances, the GDPR allows for Member States to set up implementing rules for the research exemption. As a result, there is some (necessary) flexibility to apply the GDPR in medical and health research contexts. However, the fragmented implementation rules enacted by the Member States may inevitably bring new challenges to the harmonisation of different data protection rules for research across the EU. How to avoid this regulatory fragmentation, which will hinder data sharing and cross-border research collaboration, will be another crucial issue worth taking into consideration.

In biomedical research, many codes of conduct, ethical standards, and self-governance mechanisms have been developed over years to safeguard data processing and facilitate collaboration of transnational research. A practicable compliance framework for the GDPR should be built on these existing good practices to avoid conflicts between the rules of data protection and biomedical activities. The safeguard mechanisms, such as Privacy Impact Assessments (‘PIAs’) for risk management and the requirements for transparency and accountability must also be built in by design, as integral parts of technical and organisational compliance safeguards. The adoption of PIAs plays a crucial role in assessing the risks associated with research projects and data processing and usage. It is worth noting that a PIA should be performed according to the specific context. A PIA identifies and evaluates related risks for data protection, and must consider not only physical security for data storage and encryption methods, but also the data subject’s expectations, access policies and the safeguards adopted by research institutes and associated research partners. This assessment is particularly important if data is transferred for further use or linkage.

Introducing a system of data breach notification may further improve tracking of network data usage in real time and help monitor the data flow accountably. It is recommended that the data protection authorities work closely with research and health institutes to seek input from scientific communities, to enable them to implement rules and meet the common goal of supporting research while respecting the individual’s privacy. In addition, even though the scientific exemptions under the GDPR permit re-consent to be waived under certain circumstances when technical and organisational safeguards are in place, it is important that advanced techniques of encryption and data anonymisation should not be deemed an automatic replacement of consent. Independent reviews from ethics committees must be required to stick with a comprehensive governance framework in which a contextual assessment of data protection impact and risk management have been embedded.

Conclusion

The GDPR has been viewed as a milestone in data protection reform as it aims to harmonise the existing fragmented data protection rules in Europe. Its implementation in May 2018 will require widespread standardisation and unification of data privacy requirements, and will have a broader impact on cross-border data transfers. However, to what extent both the ambition for the protection of consumers and the promotion of innovation can be achieved will be a challenge for the implementation of the GDPR. After a long process of lobbying and debate, the derogations for research have been accepted by policy makers in the EU, but the adoption of scientific exemptions remain challenging under the GDPR.

This paper has discussed these challenges in the biobanking and biomedical research context. It elucidated why dominant mechanisms such as specific consent and anonymisation, as requested by privacy protection rules, may not be appropriate for biomedical research, which generally is of a data intensive nature, open to unspecific future research, and requires the linkage of different datasets for longitudinal population-based research. The derogations permitted under the GDPR allow for broad consent and processing of sensitive data without considering if the secondary use is compatible with the consent obtained for the initial data collection. Given the broad definition of ‘research’ adopted by the GDPR, these exemptions will question the proper scope of the secondary use of data from privately funded research entities, and further harmonisation of implementation rules enacted by each Member State may be required. This paper suggested that a transparent and accountable governance framework including privacy impact assessments, notification and an opt-out option should be set up. The framework should build upon the existing ethics review safeguards, which allow for scientific research to meet the requirement of doing good science while benefitting public interest.


[*] Assistant Research Fellow, Institute of European and American Studies, Academia Sinica, Taipei, Taiwan. LLM (Columbia), JSM (Stanford), PhD in Law (London School of Economics). E-mail: chihho@sinica.edu.tw. The author appreciates the research assistance provided by Janos Meszaros and anonymous referees for comments. This paper was presented at the APSN 2016 annual conference held at the University of Auckland. The author would like to thank the conference organisers, and the helpful comments and discussions raised by the APSN members and participants.

[1] Regulation (EU) 2016/679 of the European Parliament and of the Council of 27 April 2016 on the protection of natural persons with regard to the processing of personal data and on the free movement of such data, and repealing Directive 95/46/EC (General Date Protection Regulation) [2016] OJ L 119/1 (‘GDPR’).

[2] Directive 95/46/EC of the European Parliament and of the Council of 24 October 1995 on the protection of individuals with regard to the processing of personal data and on the free movement of such data [1995] OJ L 281/31; See Directorate-General for Justice and Consumers, Reform of EU Data Protection Rules (2016) European Commission <http://ec.europa.eu/justice/data-protection/reform/index_en.htm> (‘Directive 95/46/EC’).

[3] Directorate-General for Justice and Consumers, Reform of EU Data Protection Rules (2016) European Commission <http://ec.europa.eu/justice/data-protection/reform/index_en.htm> .

[4] GDPR [2016] OJ L 119/1, art 5(1)(a).

[5] GDPR [2016] OJ L 119/1, arts 6(1)(a), 7.

[6] See the joint statement released by the Wellcome Trust and other research organisations: Wellcome Trust et al, Impact of the draft European Data Protection Regulation and proposed amendments from the rapporteur of the LIBE committee on scientific research, (May 2013) <https://wellcome.ac.uk/sites/default/files/wtvm054713.pdf>.

[7] Ibid.

[8] GDPR [2016] OJ L 119/1, arts 5, 6, 9, 89.

[9] Helen Swede, Carol L Stone and Alyssa R Norwood, ‘National population-based biobanks for genetic research’ (2007) 9 Genetics in Medicine 141.

[10] M G Hansson et al, ‘Should donors be allowed to give broad consent to future biobank research?’ (2006) 7(3) The Lancet Oncology 266.

[11] GDPR [2016] OJ L 119/1, art 32(1)(a).

[12] See National Human Genome Research Institute, Frequently Asked Questions About Genetic and Genomic Science (2 March 2016) <http://www.genome.gov/19016904> .

[13] When it is used in this article, the term biobank refers to large collections of human biological materials that may be linked with personal and health information for use in health and medical research as in the definition given by the OECD. See also Mark Stranger and Jane Kaye, ‘Governing Biobanks: An Introduction’ in Jane Kaye and Mark Strange (eds), Principles and Practice in Biobank Governance (Ashgate, 2009) 2.

[14] Ibid.

[15] Margaret Otlowski, Dianne Nicol and Mark Stranger, ‘Biobanks Information Paper’ (Information Paper E110, National Health and Medical Research Council, 2010) 9 <https://www.nhmrc.gov.au/_files_nhmrc/publications/attachments/e110_biobanks_information_paper_140520.pdf>.

[16] Organisation for Economic Co-operation and Development, OECD Guidelines on Human Biobanks and Genetic Research Databases (22 October 2009) 1 <http://www.oecd.org/dataoecd/41/47/44054609.pdf> .

[17] Mats G Hansson, ‘Ethics and Biobanks’ (2009) 100 British Journal of Cancer 8.

[18] Georg Lauss et al, ‘Towards Biobank Privacy Regimes in Responsible Innovation Societies: ESBB Conference in Granada 2012’ (2013) 11(5) Biopreservation and Biobanking 319.

[19] International HapMap Consortium, ‘The International HapMap Project’ (2003) 426 Nature 789.

[20] It refers to the notion that all medical decisions and treatment, including preventive and therapeutic care can be tailored to adapt to each individual’s particular genetic makeup.

[21] A genome-wide association study is a new method for scientists to strategically search genetic markers that involves rapidly scanning SNPs across the complete set of human genomes to find genetic variations associated with a particular disease. See National Human Genome Research Institute, Genome-wide Association Studies (27 August 2015) <http://www.genome.gov/20019523> .

[22] For more information about the application of the genome-wide association studies, see National Human Genome Research Institute, Genome-wide Association Studies (27 August 2015) <http://www.genome.gov/20019523#gwas-3> .

[23] Biobanking BioMolecular Resources Research Infrastructure (‘BBMRI-ERIC’), ‘Position Paper on the General Dara Protection Regulation’ (Position Paper, October 2015) 3 <http://www.bbmri-eric.eu/wp-content/uploads/BBMRI-ERIC-Position-Paper-General-Data-Protection-Regulation-October-2015_rev1_title.pdf> .

[24] Scientific Committee for Medical Sciences of Science Europe, ‘The Benefits of Personal Data Processing for Medical Sciences in the Context of Protection of Patient Privacy and Safety’ (Opinion Paper, Science Europe, May 2013) 5 <https://www.scienceeurope.org/wp-content/uploads/2014/05/ScienceEuropeMedicalPaper.pdf>.

[25] Parliamentary amendments for Recital 123a and Article 81(2a) (a.o.) of the draft GDPR; See Biobanking BioMolecular Resources Research Infrastructure, above n 23, 3.

[26] Biobanking BioMolecular Resources Research Infrastructure, above n 23, 8.

[27] Ibid.

[28] Ibid 4.

[29] Dara Hallinan and Michael Friedewald, ‘Open consent, Biobanking and Data Protection Law: Can Open Consent be ‘informed ‘under the Forthcoming Data Protection Regulation’ (2015) 11(1) Life Sciences, Society and Policy 1.

[30] See UK Biobank Ethics and Governance Council, UK Biobank Governance Framework-Version 3.0 (October 2007) <https://www.ukbiobank.ac.uk/wp-content/uploads/2011/05/EGF20082.pdf>.

[31] GDPR [2016] OJ L 119/1, rec 33.

[32] Ibid art 4(1).

[33] Ibid.

[34] Ibid recitals 10, 34, 35, 51, art 9(1).

[35] Ibid.

[36] Ibid art 9(2)(a).

[37] Ibid art 4(11).

[38] Ibid art 9(2)(a).

[39] Ibid art 9(2)(i).

[40] Ibid.

[41] Ibid.

[42] Ibid art 89(1).

[43] Ibid.

[44] Ibid.

[45] Ibid art 89(2).

[46] Ibid.

[47] Ibid art 89(4).

[48] See Office of the Data Protection Commissioner (Ireland), Anonymisation and psuedonymisation <https://www.dataprotection.ie/docs/Anonymisation-and-pseudonymisation/1594.htm>.

[49] GDPR [2016] OJ L 119/1, art 89(5).

[50] Ibid.

[51] Scientific Committee for Medical Sciences of Science Europe, above n 24, 8.

[52] Ibid.

[53] GDPR [2016] OJ L 119/1, recital 159, [1].

[54] Michelle Goddard, ‘The Changing Face of Compliance: Preparing Healthcare Researchers for EU Data Protection Reforms’ (Speech delivered at the British Healthcare Business Intelligence Association Annual Conference, London, 9 May 2016) 8 <https://www.bhbia.org.uk/downloads/4162/0/BHBIA_Keynote_Speech_Changing_Face_of_Compliance_-_Formatted_Handout_v1.0.pdf.aspx.>.

[55] GDPR [2016] OJ L 119/1, art 6(4), rec 50.

[56] Ibid art 5(1)(b).

[57] Ibid: ‘[F]urther processing for archiving purposes in the public interest, scientific or historical research purposes or statistical purposes shall, in accordance with Article 89(1), not be considered to be incompatible with the initial purposes’.

[58] See Royal Statistical Society, ‘Royal Statistical Society research on trust in data and attitudes toward data use / data sharing’ (Briefing Note, 22 July 2014) <http://www.statslife.org.uk/images/pdf/rss-data-trust-data-sharing-attitudes-research-note.pdf> .

[59] Ibid 26.

[60] Ibid.

[61] See Ipsos MORI Social Research Institute, ‘The One-Way Mirror: Public attitudes to commercial access to health data’ (Report prepared for the Wellcome Trust, March 2016) <https://www.ipsos.com/sites/default/files/publication/5200-03/sri-wellcome-trust-commercial-access-to-health-data.pdf>.

[62] Ibid 10. However, the extent to which this higher trust remains is not without debate. On March 2017, for example, there was a devastating security breach of one of the major computer systems used by GPs. This breach involved over 26 million NHS patients’ medical records and triggered the Information Commissioner (ICO) to start an investigation. At the end of August 2017, the ICO announced that the IT system’s provider was required to address the need to improve security measures to guarantee the fair and lawful process of patient data on the system. See Information Commissioner’s Officer, ‘ICO updated statement in relation to the potential risk to patient medical records held by GPs on TPP SystmOne’ (Media Release, 30 August 2017) <https://ico.org.uk/about-the-ico/news-and-events/news-and-blogs/2017/08/ico-updated-statement-in-relation-to-the-potential-risk-to-patient-medical-records-held-by-gps-on-tpp-systmone/>.

[63] Ibid 10–11.

[64] Ibid 11.

[65] Ibid.


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