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1.
Circulation ; 148(13): 1061-1069, 2023 09 26.
Article in English | MEDLINE | ID: mdl-37646159

ABSTRACT

The evolution of the electronic health record, combined with advances in data curation and analytic technologies, increasingly enables data sharing and harmonization. Advances in the analysis of health-related and health-proxy information have already accelerated research discoveries and improved patient care. This American Heart Association policy statement discusses how broad data sharing can be an enabling driver of progress by providing data to develop, test, and benchmark innovative methods, scalable insights, and potential new paradigms for data storage and workflow. Along with these advances come concerns about the sensitive nature of some health data, equity considerations about the involvement of historically excluded communities, and the complex intersection of laws attempting to govern behavior. Data-sharing principles are therefore necessary across a wide swath of entities, including parties who collect health information, funders, researchers, patients, legislatures, commercial companies, and regulatory departments and agencies. This policy statement outlines some of the key equity and legal background relevant to health data sharing and responsible management. It then articulates principles that will guide the American Heart Association's engagement in public policy related to data collection, sharing, and use to continue to inform its work across the research enterprise, as well as specific examples of how these principles might be applied in the policy landscape. The goal of these principles is to improve policy to support the use or reuse of health information in ways that are respectful of patients and research participants, equitable in impact in terms of both risks and potential benefits, and beneficial across broad and demographically diverse communities in the United States.


Subject(s)
American Heart Association , Information Dissemination , Humans , United States , Data Collection
2.
Nature ; 529(7586): 358-363, 2016 Jan 21.
Article in English | MEDLINE | ID: mdl-26760206

ABSTRACT

Degeneracy in the genetic code, which enables a single protein to be encoded by a multitude of synonymous gene sequences, has an important role in regulating protein expression, but substantial uncertainty exists concerning the details of this phenomenon. Here we analyse the sequence features influencing protein expression levels in 6,348 experiments using bacteriophage T7 polymerase to synthesize messenger RNA in Escherichia coli. Logistic regression yields a new codon-influence metric that correlates only weakly with genomic codon-usage frequency, but strongly with global physiological protein concentrations and also mRNA concentrations and lifetimes in vivo. Overall, the codon content influences protein expression more strongly than mRNA-folding parameters, although the latter dominate in the initial ~16 codons. Genes redesigned based on our analyses are transcribed with unaltered efficiency but translated with higher efficiency in vitro. The less efficiently translated native sequences show greatly reduced mRNA levels in vivo. Our results suggest that codon content modulates a kinetic competition between protein elongation and mRNA degradation that is a central feature of the physiology and also possibly the regulation of translation in E. coli.


Subject(s)
Codon/genetics , Escherichia coli Proteins/genetics , Escherichia coli/genetics , Gene Expression Regulation, Bacterial/genetics , Protein Biosynthesis/genetics , RNA, Bacterial/metabolism , RNA, Messenger/metabolism , DNA-Directed RNA Polymerases/metabolism , Escherichia coli/metabolism , Escherichia coli Proteins/biosynthesis , Genes, Synthetic/genetics , Half-Life , Kinetics , Logistic Models , Models, Genetic , Molecular Sequence Data , Odds Ratio , Peptide Chain Elongation, Translational , RNA Folding , RNA Stability , RNA, Bacterial/genetics , RNA, Messenger/genetics , Transcription, Genetic/genetics , Viral Proteins/metabolism
3.
Biostatistics ; 21(2): 363-367, 2020 04 01.
Article in English | MEDLINE | ID: mdl-31742358

ABSTRACT

In recent years, the applications of Machine Learning (ML) in the health care delivery setting have grown to become both abundant and compelling. Regulators have taken notice of these developments and the U.S. Food and Drug Administration (FDA) has been engaging actively in thinking about how best to facilitate safe and effective use. Although the scope of its oversight for software-driven products is limited, if FDA takes the lead in promoting and facilitating appropriate applications of causal inference as a part of ML development, that leadership is likely to have implications well beyond regulated products.


Subject(s)
Delivery of Health Care , Health Services Research , Machine Learning , Medical Informatics Applications , United States Food and Drug Administration/standards , Causality , Humans , United States
5.
Mich Law Rev ; 116(3): 421-74, 2017.
Article in English | MEDLINE | ID: mdl-29240330

ABSTRACT

Data drive modern medicine. And our tools to analyze those data are growing ever more powerful. As health data are collected in greater and greater amounts, sophisticated algorithms based on those data can drive medical innovation, improve the process of care, and increase efficiency. Those algorithms, however, vary widely in quality. Some are accurate and powerful, while others may be riddled with errors or based on faulty science. When an opaque algorithm recommends an insulin dose to a diabetic patient, how do we know that dose is correct? Patients, providers, and insurers face substantial difficulties in identifying high-quality algorithms; they lack both expertise and proprietary information. How should we ensure that medical algorithms are safe and effective? Medical algorithms need regulatory oversight, but that oversight must be appropriately tailored. Unfortunately, the Food and Drug Administration (FDA) has suggested that it will regulate algorithms under its traditional framework, a relatively rigid system that is likely to stifle innovation and to block the development of more flexible, current algorithms. This Article draws upon ideas from the new governance movement to suggest a different path. FDA should pursue a more adaptive regulatory approach with requirements that developers disclose information underlying their algorithms. Disclosure would allow FDA oversight to be supplemented with evaluation by providers, hospitals, and insurers. This collaborative approach would supplement the agency's review with ongoing real-world feedback from sophisticated market actors. Medical algorithms have tremendous potential, but ensuring that such potential is developed in high-quality ways demands a careful balancing between public and private oversight, and a role for FDA that mediates--but does not dominate--the rapidly developing industry.


Subject(s)
Algorithms , Decision Making, Computer-Assisted , Diagnosis, Computer-Assisted , Government Regulation , Decision Support Techniques , Humans , Intersectoral Collaboration , Patient Safety , Product Surveillance, Postmarketing , Reagent Kits, Diagnostic/standards , Software , Telemedicine , United States , United States Food and Drug Administration
7.
Genet Med ; 16(5): 367-73, 2014 May.
Article in English | MEDLINE | ID: mdl-24158054

ABSTRACT

PURPOSE: Researchers face the dilemma of how to obtain consent for return of incidental findings from genomic research. We surveyed and interviewed investigators and study participants, with the goal of providing suggestions for how to shape the consent process. METHODS: We performed an online survey of 254 US genetic researchers identified through the NIH RePORTER database, abstracts from the 2011 American Society of Human Genetics meeting, and qualitative semi-structured interviews with 28 genomic researchers and 20 research participants. RESULTS: Most researchers and participants endorsed disclosure of a wide range of information about return of incidental findings, including risks, benefits, impact on family members, data security, and procedures, for return of results in the event of death or incapacity and for recontact. However, most researchers were willing to devote 30 min or less to this process and expressed concerns that disclosed information would overwhelm participants, a concern shared by many participants themselves. CONCLUSION: There is a disjunction between the views of investigators and participants about the amount of information that should be disclosed and the practical realities of the research setting, including the time available for consent discussions. This strongly suggests the need for innovative approaches to the informed consent process.


Subject(s)
Access to Information , Disclosure , Genome/genetics , Incidental Findings , Informed Consent , Adult , Base Sequence , Data Collection , Female , Genetic Research , Genomics , Humans , Male , Sequence Analysis, DNA
8.
JAMA ; 322(18): 1765-1766, 2019 Nov 12.
Article in English | MEDLINE | ID: mdl-31584609
9.
Hastings Cent Rep ; 44(4): 22-32, 2014.
Article in English | MEDLINE | ID: mdl-24919982

ABSTRACT

Genomic research-including whole genome sequencing and whole exome sequencing-has a growing presence in contemporary biomedical investigation. The capacity of sequencing techniques to generate results that go beyond the primary aims of the research-historically referred to as "incidental findings"-has generated considerable discussion as to how this information should be handled-that is, whether incidental results should be returned, and if so, which ones.Federal regulations governing most human subjects research in the United States require the disclosure of "the procedures to be followed" in the research as part of the informed consent process. It seems reasonable to assume-and indeed, many commentators have concluded-that genomic investigators will be expected to inform participants about, among other procedures, the prospect that incidental findings will become available and the mechanisms for dealing with them. Investigators, most of whom will not have dealt with these issues before, will face considerable challenges in framing meaningful disclosures for research participants.To help in this task, we undertook to identify the elements that should be included in the informed consent process related to incidental findings. We did this by surveying a large number of genomic researchers (n = 241) and by conducting in-depth interviews with a smaller number of researchers (n = 28) and genomic research participants (n = 20). Based on these findings, it seems clear to us that routine approaches to informed consent are not likely to be effective in genomic research in which the prospect of incidental findings exists. Ensuring that participants' decisions are informed and meaningful will require innovative approaches to dealing with the consent issue. We have identified four prototypical models of a consent process for return of incidental findings.


Subject(s)
Biomedical Research/ethics , Genetic Testing/ethics , Genomics/ethics , Informed Consent/ethics , Truth Disclosure/ethics , Genome, Human , Humans , Incidental Findings , United States
10.
Protein Sci ; 33(3): e4898, 2024 Mar.
Article in English | MEDLINE | ID: mdl-38358135

ABSTRACT

Structural genomics consortia established that protein crystallization is the primary obstacle to structure determination using x-ray crystallography. We previously demonstrated that crystallization propensity is systematically related to primary sequence, and we subsequently performed computational analyses showing that arginine is the most overrepresented amino acid in crystal-packing interfaces in the Protein Data Bank. Given the similar physicochemical characteristics of arginine and lysine, we hypothesized that multiple lysine-to-arginine (KR) substitutions should improve crystallization. To test this hypothesis, we developed software that ranks lysine sites in a target protein based on the redundancy-corrected KR substitution frequency in homologs. This software can be run interactively on the worldwide web at https://www.pxengineering.org/. We demonstrate that three unrelated single-domain proteins can tolerate 5-11 KR substitutions with at most minor destabilization, and, for two of these three proteins, the construct with the largest number of KR substitutions exhibits significantly enhanced crystallization propensity. This approach rapidly produced a 1.9 Å crystal structure of a human protein domain refractory to crystallization with its native sequence. Structures from Bulk KR-substituted domains show the engineered arginine residues frequently make hydrogen-bonds across crystal-packing interfaces. We thus demonstrate that Bulk KR substitution represents a rational and efficient method for probabilistic engineering of protein surface properties to improve crystallization.


Subject(s)
Lysine , Proteins , Humans , Lysine/chemistry , Crystallization , Proteins/genetics , Amino Acids/chemistry , Crystallography, X-Ray , Arginine/metabolism
11.
JMIR Form Res ; 6(4): e33970, 2022 Apr 11.
Article in English | MEDLINE | ID: mdl-35404258

ABSTRACT

Machine learning applications promise to augment clinical capabilities and at least 64 models have already been approved by the US Food and Drug Administration. These tools are developed, shared, and used in an environment in which regulations and market forces remain immature. An important consideration when evaluating this environment is the introduction of open-source solutions in which innovations are freely shared; such solutions have long been a facet of digital culture. We discuss the feasibility and implications of open-source machine learning in a health care infrastructure built upon proprietary information. The decreased cost of development as compared to drugs and devices, a longstanding culture of open-source products in other industries, and the beginnings of machine learning-friendly regulatory pathways together allow for the development and deployment of open-source machine learning models. Such tools have distinct advantages including enhanced product integrity, customizability, and lower cost, leading to increased access. However, significant questions regarding engineering concerns about implementation infrastructure and model safety, a lack of incentives from intellectual property protection, and nebulous liability rules significantly complicate the ability to develop such open-source models. Ultimately, the reconciliation of open-source machine learning and the proprietary information-driven health care environment requires that policymakers, regulators, and health care organizations actively craft a conducive market in which innovative developers will continue to both work and collaborate.

12.
Science ; 377(6611): 1158-1160, 2022 09 09.
Article in English | MEDLINE | ID: mdl-36074837

ABSTRACT

Clinical practice, data collection, and medical AI constitute self-reinforcing and interacting cycles of exclusion.


Subject(s)
Healthcare Disparities , Minority Groups , Social Isolation , Artificial Intelligence , Big Data , Humans
13.
Vaccine ; 39(42): 6291-6295, 2021 10 08.
Article in English | MEDLINE | ID: mdl-34556366

ABSTRACT

Collaboration is central for initiatives and efforts in the race to fight COVID-19, with particular focus on fostering rapid development of safe and effective COVID-19 vaccines. We investigated the types of partnerships that have emerged during the pandemic to develop these products. Using the World Health Organization's list of COVID-19 vaccine developments, we found nearly one third of all vaccine candidates were developed by partnerships, which tended to use next-gen vaccine platforms more than solo efforts. These partnerships vary substantially between materials-transfer partnerships and knowledge-sharing partnerships. The difference is important: The type of sharing between partners not only shapes the collaboration, but also bears implications for knowledge and technology development in the field and more broadly. Policies promoting fair and effective collaboration and knowledge-sharing are key for public health to avoid stumbling blocks for vaccine development, deployment, and equitable access, both for COVID-19 and expected future pandemics.


Subject(s)
Biomedical Research , COVID-19 , COVID-19 Vaccines , Humans , Policy , SARS-CoV-2
14.
Health Aff (Millwood) ; 40(12): 1892-1899, 2021 12.
Article in English | MEDLINE | ID: mdl-34871076

ABSTRACT

Many promising advances in precision health and other Big Data research rely on large data sets to analyze correlations among genetic variants, behavior, environment, and outcomes to improve population health. But these data sets are generally populated with demographically homogeneous cohorts. We conducted a retrospective cohort study of patients at a major academic medical center during 2012-19 to explore how recruitment and enrollment approaches affected the demographic diversity of participants in its research biospecimen and data bank. We found that compared with the overall clinical population, patients who consented to enroll in the research data bank were significantly less diverse in terms of age, sex, race, ethnicity, and socioeconomic status. Compared with patients who were recruited for the data bank, patients who enrolled were younger and less likely to be Black or African American, Asian, or Hispanic. The overall demographic diversity of the data bank was affected as much (and in some cases more) by which patients were considered eligible for recruitment as by which patients consented to enroll. Our work underscores the need for systemic commitment to diversify data banks so that different communities can benefit from research.


Subject(s)
Ethnicity , Hispanic or Latino , Black or African American , Eligibility Determination , Humans , Retrospective Studies
15.
Nat Med ; 25(1): 37-43, 2019 01.
Article in English | MEDLINE | ID: mdl-30617331

ABSTRACT

Big data has become the ubiquitous watch word of medical innovation. The rapid development of machine-learning techniques and artificial intelligence in particular has promised to revolutionize medical practice from the allocation of resources to the diagnosis of complex diseases. But with big data comes big risks and challenges, among them significant questions about patient privacy. Here, we outline the legal and ethical challenges big data brings to patient privacy. We discuss, among other topics, how best to conceive of health privacy; the importance of equity, consent, and patient governance in data collection; discrimination in data uses; and how to handle data breaches. We close by sketching possible ways forward for the regulatory system.


Subject(s)
Big Data , Delivery of Health Care , Privacy , Health Insurance Portability and Accountability Act , Humans , United States
17.
JAMA Netw Open ; 7(5): e2414139, 2024 May 01.
Article in English | MEDLINE | ID: mdl-38819827

ABSTRACT

This cross-sectional study investigates the scope and breadth of artificial intelligence use in drug development.


Subject(s)
Artificial Intelligence , Drug Development , Drug Development/methods , Humans
19.
Sci Transl Med ; 10(471)2018 12 12.
Article in English | MEDLINE | ID: mdl-30541791

ABSTRACT

New machine-learning techniques entering medicine present challenges in validation, regulation, and integration into practice.


Subject(s)
Algorithms , Big Data , Machine Learning , Reproducibility of Results , Social Control, Formal
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