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Accepted for/Published in: JMIR Research Protocols

Date Submitted: Mar 8, 2023
Date Accepted: Apr 20, 2023

The final, peer-reviewed published version of this preprint can be found here:

Assessment of Multidimensional Health Care Parameters Among Adults in Japan for Developing a Virtual Human Generative Model: Protocol for a Cross-sectional Study

Hibi M, Katada S, Kawakami A, Bito K, Otsuka M, Sugitani K, Muliandi A, Yamanaka N, Hasumura T, Ando Y, Fushimi T, Fujimatsu T, Akatsu T, Kawano S, Kimura R, Tsuchiya S, Yamamoto Y, Haneoka M, Kushida K, Hideshima T, Shimizu E, Suzuki J, Kirino A, Tsujimura H, Nakamura S, Sakamoto T, Tazoe Y, Yabuki M, Nagase S, Fukuda R, Yamashiro Y, Ojima N, Sudo M, Oya N, Minegishi Y, Misawa K, Charoenphakdee N, Gao Z, Hayashi K, Oono K, Sugawara Y, Yamaguchi S, Ono T, Maruyama H

Assessment of Multidimensional Health Care Parameters Among Adults in Japan for Developing a Virtual Human Generative Model: Protocol for a Cross-sectional Study

JMIR Res Protoc 2023;12:e47024

DOI: 10.2196/47024

PMID: 37294611

PMCID: 10337413

Assessment of Multidimensional Healthcare Parameters Among Adult Men and Women in Japan for Developing a Virtual Human Generative Model: Protocol for a Cross-Sectional Study

  • Masanobu Hibi; 
  • Shun Katada; 
  • Aya Kawakami; 
  • Kotatsu Bito; 
  • Mayumi Otsuka; 
  • Kei Sugitani; 
  • Adeline Muliandi; 
  • Nami Yamanaka; 
  • Takahiro Hasumura; 
  • Yasutoshi Ando; 
  • Takashi Fushimi; 
  • Teruhisa Fujimatsu; 
  • Tomoki Akatsu; 
  • Sawako Kawano; 
  • Ren Kimura; 
  • Shigeki Tsuchiya; 
  • Yuki Yamamoto; 
  • Mai Haneoka; 
  • Ken Kushida; 
  • Tomoki Hideshima; 
  • Eri Shimizu; 
  • Jumpei Suzuki; 
  • Aya Kirino; 
  • Hisashi Tsujimura; 
  • Shun Nakamura; 
  • Takashi Sakamoto; 
  • Yuki Tazoe; 
  • Masayuki Yabuki; 
  • Shinobu Nagase; 
  • Reiko Fukuda; 
  • Yukari Yamashiro; 
  • Nobutoshi Ojima; 
  • Motoki Sudo; 
  • Naoki Oya; 
  • Yoshihiko Minegishi; 
  • Kouichi Misawa; 
  • Nontawat Charoenphakdee; 
  • Zhengyan Gao; 
  • Kohei Hayashi; 
  • Kenta Oono; 
  • Yohei Sugawara; 
  • Shoichiro Yamaguchi; 
  • Takahiro Ono; 
  • Hiroshi Maruyama

ABSTRACT

Background:

Human health status can be measured in several different ways and statistical relationships among various measurements can be represented as a joint probability distribution. Approximation of the current health status of individuals will allow for more personalized and preventive healthcare by informing the potential risks and developing personalized interventions. Understanding the modifiable risk factors related to lifestyle, diet, and physical activity will facilitate the design of optimal treatment approaches for individuals.

Objective:

This study aims to provide a high-dimensional, cross-sectional dataset of comprehensive healthcare information to construct a virtual human generative model (VHGM) based on a joint probability distribution.

Methods:

In this cross-sectional observational study, data will be collected from a population of 1000 adult men and women (aged ≥20 years) matching the age ratio of the typical adult Japanese population. Data will include biochemical and metabolic profiles from blood, urine, saliva, and oral glucose tolerance tests; bacterial profiles from feces, facial skin, scalp skin, and saliva; mRNA, proteome, and metabolite analyses from facial and scalp skin surface lipids; lifestyle survey and questionnaire; physical, motor, cognitive, and vascular function analyses; alopecia; and comprehensive analyses of body odor components. Statistical analyses will examine multiple health-related items using a joint probability distribution model. We will train a joint probability distribution, the VHGM, by combining a commercially available healthcare dataset containing large amounts of relatively low-dimensional data with a high-dimensional, cross-sectional dataset. The trained VHGM is expected to enable various healthcare applications through application program interface calls.

Results:

Written informed consent will be required to participate in the study. The study has been approved by the Institutional Review Boards of the Kao Corporation (Approval # K0023-2108) and the Preferred Network, Inc. (Approval # ET22110047).

Conclusions:

The collected data are expected to provide information on the relationships between various health statuses. Because different degrees of health status correlations are expected to have different effects on individual health status, this study will contribute to developing empirically justified interventions based on the population. Clinical Trial: The trial is registered with the University Hospital Medical Information Network (Registration No. UMIN000045746).


 Citation

Please cite as:

Hibi M, Katada S, Kawakami A, Bito K, Otsuka M, Sugitani K, Muliandi A, Yamanaka N, Hasumura T, Ando Y, Fushimi T, Fujimatsu T, Akatsu T, Kawano S, Kimura R, Tsuchiya S, Yamamoto Y, Haneoka M, Kushida K, Hideshima T, Shimizu E, Suzuki J, Kirino A, Tsujimura H, Nakamura S, Sakamoto T, Tazoe Y, Yabuki M, Nagase S, Fukuda R, Yamashiro Y, Ojima N, Sudo M, Oya N, Minegishi Y, Misawa K, Charoenphakdee N, Gao Z, Hayashi K, Oono K, Sugawara Y, Yamaguchi S, Ono T, Maruyama H

Assessment of Multidimensional Health Care Parameters Among Adults in Japan for Developing a Virtual Human Generative Model: Protocol for a Cross-sectional Study

JMIR Res Protoc 2023;12:e47024

DOI: 10.2196/47024

PMID: 37294611

PMCID: 10337413

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