| Literature DB >> 33658445 |
Toshiyuki Nagai1, Motoki Nakao1, Toshihisa Anzai1.
Abstract
Clinical risk stratification is a key strategy used to identify low- and high-risk subjects to optimize the management, ranging from pharmacological treatment to palliative care, of patients with heart failure (HF). Using statistical modeling techniques, many HF risk prediction models that combine predictors to assess the risk of specific endpoints, including death or worsening HF, have been developed. However, most risk prediction models have not been well-integrated into the clinical setting because of their inadequacy and diverse predictive performance. To improve the performance of such models, several factors, including optimal sampling and biomarkers, need to be considered when deriving the models; however, given the large heterogeneity of HF, the currently advocated one-size-fits-all approach is not appropriate for every patient. Recent advances in techniques to analyze biological "omics" information could allow for the development of a personalized medicine platform, and there is growing awareness that an integrated approach based on the concept of system biology may be an excessively naïve view of the multiple contributors and complexity of an individual's HF phenotype. This review article describes the progress in risk stratification strategies and perspectives of emerging precision medicine in the field of HF management.Entities:
Keywords: Omics; Phenotyping; Precision medicine; Prediction model; Risk stratification
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Year: 2021 PMID: 33658445 DOI: 10.1253/circj.CJ-20-1299
Source DB: PubMed Journal: Circ J ISSN: 1346-9843 Impact factor: 2.993