Individual health-disease phase diagrams for disease prevention based on machine learning.

Journal: Journal of biomedical informatics
Published Date:

Abstract

Early disease detection and prevention methods based on effective interventions are gaining attention worldwide. Progress in precision medicine has revealed that substantial heterogeneity exists in health data at the individual level and that complex health factors are involved in chronic disease development. Machine-learning techniques have enabled precise personal-level disease prediction by capturing individual differences in multivariate data. However, it is challenging to identify what aspects should be improved for disease prevention based on future disease-onset prediction because of the complex relationships among multiple biomarkers. Here, we present a health-disease phase diagram (HDPD) that represents an individual's health state by visualizing the future-onset boundary values of multiple biomarkers that fluctuate early in the disease progression process. In HDPDs, future-onset predictions are represented by perturbing multiple biomarker values while accounting for dependencies among variables. We constructed HDPDs for 11 diseases using longitudinal health checkup cohort data of 3,238 individuals, comprising 3,215 measurement items and genetic data. The improvement of biomarker values to the non-onset region in HDPD remarkably prevented future disease onset in 7 out of 11 diseases. HDPDs can represent individual physiological states in the onset process and be used as intervention goals for disease prevention.

Authors

  • Kazuki Nakamura
    Research and Business Development Department, Kyowa Hakko Bio Co., Ltd., Tokyo, Japan.
  • Eiichiro Uchino
    Department of Medical Intelligent Systems, Graduate School of Medicine, Kyoto University, Kyoto, Japan; Department of Nephrology, Graduate School of Medicine, Kyoto University, Kyoto, Japan.
  • Noriaki Sato
    Department of Nephrology, Graduate School of Medicine, Kyoto University, Kyoto, Japan; Department of Biomedical Data Intelligence, Graduate School of Medicine, Kyoto University, Kyoto, Japan.
  • Ayano Araki
    Department of Biomedical Data Intelligence, Graduate School of Medicine, Kyoto University, Kyoto 606-8507, Japan.
  • Kei Terayama
    Graduate School of Medical Life Science, Yokohama City University, Yokohama, Kanagawa 230-0045, Japan.
  • Ryosuke Kojima
    Department of Biomedical Data Intelligence, Kyoto University Graduate School of Medicine, Sakyo-ku, Kyoto, Kyoto, Japan.
  • Koichi Murashita
    Center of Innovation Research Initiatives Organization, Hirosaki University, Hirosaki, Japan.
  • Ken Itoh
    Department of Stress Response Science, Hirosaki University Graduate School of Medicine, Hirosaki, Japan.
  • Tatsuya Mikami
    Department of Gastroenterology and Hematology, Hirosaki University Graduate School of Medicine, 5 Zaifu-cho, Hirosaki, 036-8562, Japan.
  • Yoshinori Tamada
    Department of Medical Intelligent Systems, Graduate School of Medicine, Kyoto University, Kyoto, Japan.
  • Yasushi Okuno
    Graduate School of Medicine, Kyoto University, Shogoin-kawaharacho, city/>Sakyo-ku Kyoto, 606-8507, Japan.