| Literature DB >> 30003435 |
James Love-Koh1,2, Alison Peel3, Juan Carlos Rejon-Parrilla4, Kate Ennis3,5, Rosemary Lovett4, Andrea Manca6,7, Anastasia Chalkidou8, Hannah Wood3, Matthew Taylor3.
Abstract
OBJECTIVE: Precision medicine allows healthcare interventions to be tailored to groups of patients based on their disease susceptibility, diagnostic or prognostic information, or treatment response. We analysed what developments are expected in precision medicine over the next decade and considered the implications for health technology assessment (HTA) agencies.Entities:
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Year: 2018 PMID: 30003435 PMCID: PMC6244622 DOI: 10.1007/s40273-018-0686-6
Source DB: PubMed Journal: Pharmacoeconomics ISSN: 1170-7690 Impact factor: 4.981
Fig. 1Record flow diagram for pragmatic literature review. Note: Of the 525 records excluded for eligibility reasons, 382 were based on abstract and full-text review, with the remaining 143 removed due to being published prior to 2011
Fig. 2Defining precision medicine
Types of precision medicine technologies
| Type of technology or service | Relevance to precision medicine | Estimated timescales for use |
|---|---|---|
| Tests for prognostic biomarkers | Biomarkers indicate disease course and inform the patient treatment pathway | Genomic biomarkers are already in use. Rapid discovery of proteomic and metabolomic biomarkers is expected in the next 5 years |
| Tests for disease susceptibility biomarkers | Biomarkers indicate risk of developing a particular condition and inform the patient treatment pathway | |
| Tests for predictive biomarkers | Biomarkers predict treatment response and inform therapy choice | An increasing number are being evaluated by HTA agencies—a review found NICE had evaluated seven by 2014 [ |
| Diagnostic services | Services inform diagnoses and the patient treatment pathway | Some of these services are already in use |
| Complex algorithms | Clinical, genomic, behavioural (and more) data are utilised by these algorithms to inform diagnosis, recommendations for patient treatment pathways and therapy choices | Several are being developed and trialled—expected to be in clinical practice within the next decade |
| Digital health applications | Apps draw on clinical and behavioural data and aim to influence patient behaviour, healthcare use and/or choice of treatment | Apps are already available but numbers are expected to increase dramatically in next decade |
| Risk prediction tools | Patient histories and characteristics (e.g. BMI, co-morbidities) are used to calculate disease risk, informing the patient treatment pathway | Currently available for a wide range of clinical areas |
| Patient decision aids | Instruments support patients in making decisions tailored to their preferences | Currently available for a wide range of clinical areas |
AI artificial intelligence, BMI body mass index, HTA health technology assessment, NICE National Institute for Health and Care Excellence
Fig. 3Challenges for health technology assessment agencies raised by precision medicine. Note: The first-tier categories (scoping to review) relate to the four principal stages of a typical health technology assessment appraisal, such as that used by National Institute for Health and Care Excellence (NICE) in England for traditional pharmaceutical technologies [32]
| Three types of precision medicine technologies are likely to become more widespread in clinical practice over the next decade: ‘omics’-based biomarkers; complex artificial intelligence-based algorithms; and digital health applications |
| These innovations will require health technology assessment and guideline-producing agencies to adapt their methods and processes |
| The fast pace of discovery technological innovation, along with the potentially complex and uncertain treatment pathways patients will be presented with, are at the centre of the new challenges |