Chapter title |
Text Mining for Precision Medicine: Bringing Structure to EHRs and Biomedical Literature to Understand Genes and Health.
|
---|---|
Chapter number | 7 |
Book title |
Translational Biomedical Informatics
|
Published in |
Advances in experimental medicine and biology, November 2016
|
DOI | 10.1007/978-981-10-1503-8_7 |
Pubmed ID | |
Book ISBNs |
978-9-81-101502-1, 978-9-81-101503-8
|
Authors |
Michael Simmons, Ayush Singhal, Zhiyong Lu, Simmons, Michael, Singhal, Ayush, Lu, Zhiyong |
Editors |
Bairong Shen, Haixu Tang, Xiaoqian Jiang |
Abstract |
The key question of precision medicine is whether it is possible to find clinically actionable granularity in diagnosing disease and classifying patient risk. The advent of next-generation sequencing and the widespread adoption of electronic health records (EHRs) have provided clinicians and researchers a wealth of data and made possible the precise characterization of individual patient genotypes and phenotypes. Unstructured text-found in biomedical publications and clinical notes-is an important component of genotype and phenotype knowledge. Publications in the biomedical literature provide essential information for interpreting genetic data. Likewise, clinical notes contain the richest source of phenotype information in EHRs. Text mining can render these texts computationally accessible and support information extraction and hypothesis generation. This chapter reviews the mechanics of text mining in precision medicine and discusses several specific use cases, including database curation for personalized cancer medicine, patient outcome prediction from EHR-derived cohorts, and pharmacogenomic research. Taken as a whole, these use cases demonstrate how text mining enables effective utilization of existing knowledge sources and thus promotes increased value for patients and healthcare systems. Text mining is an indispensable tool for translating genotype-phenotype data into effective clinical care that will undoubtedly play an important role in the eventual realization of precision medicine. |
X Demographics
As of 1 July 2024, you may notice a temporary increase in the numbers of X profiles with Unknown location. Click here to learn more.
Geographical breakdown
Country | Count | As % |
---|---|---|
United States | 2 | 67% |
Spain | 1 | 33% |
Demographic breakdown
Type | Count | As % |
---|---|---|
Practitioners (doctors, other healthcare professionals) | 1 | 33% |
Scientists | 1 | 33% |
Members of the public | 1 | 33% |
Mendeley readers
Geographical breakdown
Country | Count | As % |
---|---|---|
Spain | 1 | <1% |
Unknown | 141 | 99% |
Demographic breakdown
Readers by professional status | Count | As % |
---|---|---|
Student > Ph. D. Student | 25 | 18% |
Researcher | 25 | 18% |
Student > Master | 13 | 9% |
Student > Bachelor | 10 | 7% |
Professor > Associate Professor | 6 | 4% |
Other | 20 | 14% |
Unknown | 43 | 30% |
Readers by discipline | Count | As % |
---|---|---|
Computer Science | 29 | 20% |
Medicine and Dentistry | 20 | 14% |
Biochemistry, Genetics and Molecular Biology | 7 | 5% |
Agricultural and Biological Sciences | 7 | 5% |
Pharmacology, Toxicology and Pharmaceutical Science | 5 | 4% |
Other | 24 | 17% |
Unknown | 50 | 35% |