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

Author:

Hibi MasanobuORCID,Katada ShunORCID,Kawakami AyaORCID,Bito KotatsuORCID,Ohtsuka MayumiORCID,Sugitani KeiORCID,Muliandi AdelineORCID,Yamanaka NamiORCID,Hasumura TakahiroORCID,Ando YasutoshiORCID,Fushimi TakashiORCID,Fujimatsu TeruhisaORCID,Akatsu TomokiORCID,Kawano SawakoORCID,Kimura RenORCID,Tsuchiya ShigekiORCID,Yamamoto YuukiORCID,Haneoka MaiORCID,Kushida KenORCID,Hideshima TomokiORCID,Shimizu EriORCID,Suzuki JumpeiORCID,Kirino AyaORCID,Tsujimura HisashiORCID,Nakamura ShunORCID,Sakamoto TakashiORCID,Tazoe YukiORCID,Yabuki MasayukiORCID,Nagase ShinobuORCID,Hirano TamakiORCID,Fukuda ReikoORCID,Yamashiro YukariORCID,Nagashima YoshinaoORCID,Ojima NobutoshiORCID,Sudo MotokiORCID,Oya NaokiORCID,Minegishi YoshihikoORCID,Misawa KoichiORCID,Charoenphakdee NontawatORCID,Gao ZhengyanORCID,Hayashi KoheiORCID,Oono KentaORCID,Sugawara YoheiORCID,Yamaguchi ShoichiroORCID,Ono TakahiroORCID,Maruyama HiroshiORCID

Abstract

BACKGROUND

Human health status can be measured on the basis of many different parameters. Statistical relationships among these different health parameters will enable several possible health care applications and an approximation of the current health status of individuals, which will allow for more personalized and preventive health care by informing the potential risks and developing personalized interventions. Furthermore, a better understanding of 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 data set of comprehensive health care information to construct a combined statistical model as a single joint probability distribution and enable further studies on individual relationships among the multidimensional data obtained.

METHODS

In this cross-sectional observational study, data were collected from a population of 1000 adult men and women (aged ≥20 years) matching the age ratio of the typical adult Japanese population. Data include biochemical and metabolic profiles from blood, urine, saliva, and oral glucose tolerance tests; bacterial profiles from feces, facial skin, scalp skin, and saliva; messenger RNA, proteome, and metabolite analyses of facial and scalp skin surface lipids; lifestyle surveys and questionnaires; physical, motor, cognitive, and vascular function analyses; alopecia analysis; and comprehensive analyses of body odor components. Statistical analyses will be performed in 2 modes: one to train a joint probability distribution by combining a commercially available health care data set containing large amounts of relatively low-dimensional data with the cross-sectional data set described in this paper and another to individually investigate the relationships among the variables obtained in this study.

RESULTS

Recruitment for this study started in October 2021 and ended in February 2022, with a total of 997 participants enrolled. The collected data will be used to build a joint probability distribution called a Virtual Human Generative Model. Both the model and the collected data are expected to provide information on the relationships between various health statuses.

CONCLUSIONS

As different degrees of health status correlations are expected to differentially affect individual health status, this study will contribute to the development of empirically justified interventions based on the population.

INTERNATIONAL REGISTERED REPORT

DERR1-10.2196/47024

Publisher

JMIR Publications Inc.

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