| Literature DB >> 27993174 |
Jacques S Beckmann1, Daniel Lew2.
Abstract
This era of groundbreaking scientific developments in high-resolution, high-throughput technologies is allowing the cost-effective collection and analysis of huge, disparate datasets on individual health. Proper data mining and translation of the vast datasets into clinically actionable knowledge will require the application of clinical bioinformatics. These developments have triggered multiple national initiatives in precision medicine-a data-driven approach centering on the individual. However, clinical implementation of precision medicine poses numerous challenges. Foremost, precision medicine needs to be contrasted with the powerful and widely used practice of evidence-based medicine, which is informed by meta-analyses or group-centered studies from which mean recommendations are derived. This "one size fits all" approach can provide inadequate solutions for outliers. Such outliers, which are far from an oddity as all of us fall into this category for some traits, can be better managed using precision medicine. Here, we argue that it is necessary and possible to bridge between precision medicine and evidence-based medicine. This will require worldwide and responsible data sharing, as well as regularly updated training programs. We also discuss the challenges and opportunities for achieving clinical utility in precision medicine. We project that, through collection, analyses and sharing of standardized medically relevant data globally, evidence-based precision medicine will shift progressively from therapy to prevention, thus leading eventually to improved, clinician-to-patient communication, citizen-centered healthcare and sustained well-being.Entities:
Mesh:
Year: 2016 PMID: 27993174 PMCID: PMC5165712 DOI: 10.1186/s13073-016-0388-7
Source DB: PubMed Journal: Genome Med ISSN: 1756-994X Impact factor: 11.117
Examples of challenges and opportunities of evidence-based precision medicine
| Challenges | Opportunities |
|---|---|
| •Multiplicity of stakeholders and disciplines | •Improved disease delineation, classification, and stratification |
| Clinical bioinformatics | Bioinformatics mining and use of omics and other high-throughput data in a clinical setting, integrating various standardized and interoperable datasets, extracting valuable clinically useful medical knowledge from these data resources, and providing clinical-grade analyses or decision-support tools. |
| Clinical utility | The relevance and utility of an intervention in patient care; the likelihood that an intervention will improve patient outcomes [ |
| Evidence-based medicine | The use of evidence from well-designed and well-conducted research (such as from meta-analyses, systematic reviews, and randomized controlled trials) to optimize decision-making in medicine [ |
| Electronic health record (EHR) | Digital version of data pertaining to the health status of patients (such as medical and treatment histories), and allowing easy and secure information retrieval. |
| Incidentalome | Ensemble of abnormal secondary incidental findings. |
| Interoperability | Ability to exchange electronic information, based on implementation of standards, without special effort on the part of the user. |
| Metabolomics | The high-throughput identification and quantification of small-molecule metabolites or exogenous substances present in cells, tissues, biofluids, and organisms. |
| Microbiome | The collective genome of our indigenous microbes present in a biological specimen or organism. |
| P4 medicine | Acronym referring to predictive, preventive, personalized, and participatory (P4) medicine, a systems approach that is proactive and individualized, with an emphasis not only on disease, but also on wellness [ |
| Personalized medicine | Medical interventions tailored to a specific patient based on the individual characteristics of this patient and their inferred response or risk of disease. |
| Precision medicine | Precision medicine seeks to move away from symptom-based taxonomies towards the development of individualized care, to be achieved through the molecular characterization of individuals in a multi-layered patient-centered system, with customized medical interventions, taking into account a myriad of factors (such as the patient’s genome, environment, and lifestyle) that can influence development of disease or treatment response and thereby improve health (modified from [ |
| Quantified self | Self-monitoring and data acquisition on, among others, vital signs, behavior, and lifestyle, as a means to improve health and fitness. |
| Stratified medicine | While there may be subtle differences in the literal meanings of the terms “personalized medicine”, “precision medicine”, and “stratified medicine”, they usually refer to the same concept when applied in practice. Stratified medicine (mainly used in the UK) is more treatment-dependent, targeting it according to relevant (biological, clinical, and other) characteristics of subgroups of patients [ |
| Systems medicine | Interdisciplinary study of the systems of the human body as part of an integrated whole, incorporating biochemical, physiological, and environment interactions [ |