Development of model based on clock gene expression of human hair follicle cells to estimate circadian time

Chronobiol Int. 2020 Jul;37(7):993-1001. doi: 10.1080/07420528.2020.1777150. Epub 2020 Jul 13.

Abstract

Considering the effects of circadian misalignment on human pathophysiology and behavior, it is important to be able to detect an individual's endogenous circadian time. We developed an endogenous Clock Estimation Model (eCEM) based on a machine learning process using the expression of 10 circadian genes. Hair follicle cells were collected from 18 healthy subjects at 08:00, 11:00, 15:00, 19:00, and 23:00 h for two consecutive days, and the expression patterns of 10 circadian genes were obtained. The eCEM was designed using the inverse form of the circadian gene rhythm function (i.e., Circadian Time = F(gene)), and the accuracy of eCEM was evaluated by leave-one-out cross-validation (LOOCV). As a result, six genes (PER1, PER3, CLOCK, CRY2, NPAS2, and NR1D2) were selected as the best model, and the error range between actual and predicted time was 3.24 h. The eCEM is simple and applicable in that a single time-point sampling of hair follicle cells at any time of the day is sufficient to estimate the endogenous circadian time.

Keywords: Circadian clock; circadian genes; circadian time estimation; hair follicle; machine learning.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • CLOCK Proteins / genetics
  • Circadian Rhythm Signaling Peptides and Proteins
  • Circadian Rhythm* / genetics
  • Gene Expression
  • Hair Follicle*
  • Humans

Substances

  • Circadian Rhythm Signaling Peptides and Proteins
  • CLOCK Proteins