医学部

HE YUPENG

ホー ウホウ  (YUPENG HE)

基本情報

所属
藤田医科大学 医学部 公衆衛生学 助教

ORCID ID
 https://orcid.org/0000-0003-3162-0176
J-GLOBAL ID
202201020817428608
researchmap会員ID
R000033736

論文

 12
  • Yupeng He, Kenji Sakuma, Taro Kishi, Yuanying Li, Masaaki Matsunaga, Shinichi Tanihara, Nakao Iwata, Atsuhiko Ota
    Journal of Clinical Medicine 13(10) 2970-2970 2024年5月17日  
    Background and Objective: Excellent generalizability is the precondition for the widespread practical implementation of machine learning models. In our previous study, we developed the schizophrenia classification model (SZ classifier) to identify potential schizophrenia patients in the Japanese population. The SZ classifier has exhibited impressive performance during internal validation. However, ensuring the robustness and generalizability of the SZ classifier requires external validation across independent sample sets. In this study, we aimed to present an external validation of the SZ classifier using outpatient data. Methods: The SZ classifier was trained by using online survey data, which incorporate demographic, health-related, and social comorbidity features. External validation was conducted using an outpatient sample set which is independent from the sample set during the model development phase. The model performance was assessed based on the sensitivity and misclassification rates for schizophrenia, bipolar disorder, and major depression patients. Results: The SZ classifier demonstrated a sensitivity of 0.75 when applied to schizophrenia patients. The misclassification rates were 59% and 55% for bipolar disorder and major depression patients, respectively. Conclusions: The SZ classifier currently encounters challenges in accurately determining the presence or absence of schizophrenia at the individual level. Prior to widespread practical implementation, enhancements are necessary to bolster the accuracy and diminish the misclassification rates. Despite the current limitations of the model, such as poor specificity for certain psychiatric disorders, there is potential for improvement if including multiple types of psychiatric disorders during model development.
  • Masaaki Matsunaga, Yupeng He, May Thet Khine, Xuliang Shi, Ryusei Okegawa, Yuanying Li, Hiroshi Yatsuya, Atsuhiko Ota
    Journal of Cancer Survivorship 2024年2月28日  
  • Yupeng He, Qiwen Sun, Masaaki Matsunaga, Atsuhiko Ota
    JAMIA Open 7(1) 2024年1月4日  
    Abstract Objectives This study aimed to develop an approach to enhance the model precision by artificial images. Materials and Methods Given an epidemiological study designed to predict 1 response using f features with M samples, each feature was converted into a pixel with certain value. Permutated these pixels into F orders, resulting in F distinct artificial image sample sets. Based on the experience of image recognition techniques, appropriate training images results in higher precision model. In the preliminary experiment, a binary response was predicted by 76 features, the sample set included 223 patients and 1776 healthy controls. Results We randomly selected 10 000 artificial sample sets to train the model. Models’ performance (area under the receiver operating characteristic curve values) depicted a bell-shaped distribution. Conclusion The model construction strategy developed in the research has potential to capture feature order related information and enhance model predictability.
  • Yupeng He, Masaaki Matsunaga, Yuanying Li, Taro Kishi, Shinichi Tanihara, Nakao Iwata, Takahiro Tabuchi, Atsuhiko Ota
    JMIR Formative Research 7 e50193-e50193 2023年11月15日  
    Background In Japan, challenges were reported in accurately estimating the prevalence of schizophrenia among the general population. Retrieving previous studies, we investigated that patients with schizophrenia were more likely to experience poor subjective well-being and various physical, psychiatric, and social comorbidities. These factors might have great potential for precisely classifying schizophrenia cases in order to estimate the prevalence. Machine learning has shown a positive impact on many fields, including epidemiology, due to its high-precision modeling capability. It has been applied in research on mental disorders. However, few studies have applied machine learning technology to the precise classification of schizophrenia cases by variables of demographic and health-related backgrounds, especially using large-scale web-based surveys. Objective The aim of the study is to construct an artificial neural network (ANN) model that can accurately classify schizophrenia cases from large-scale Japanese web-based survey data and to verify the generalizability of the model. Methods Data were obtained from a large Japanese internet research pooled panel (Rakuten Insight, Inc) in 2021. A total of 223 individuals, aged 20-75 years, having schizophrenia, and 1776 healthy controls were included. Answers to the questions in a web-based survey were formatted as 1 response variable (self-report diagnosed with schizophrenia) and multiple feature variables (demographic, health-related backgrounds, physical comorbidities, psychiatric comorbidities, and social comorbidities). An ANN was applied to construct a model for classifying schizophrenia cases. Logistic regression (LR) was used as a reference. The performances of the models and algorithms were then compared. Results The model trained by the ANN performed better than LR in terms of area under the receiver operating characteristic curve (0.86 vs 0.78), accuracy (0.93 vs 0.91), and specificity (0.96 vs 0.94), while the model trained by LR showed better sensitivity (0.63 vs 0.56). Comparing the performances of the ANN and LR, the ANN was better in terms of area under the receiver operating characteristic curve (bootstrapping: 0.847 vs 0.773 and cross-validation: 0.81 vs 0.72), while LR performed better in terms of accuracy (0.894 vs 0.856). Sleep medication use, age, household income, and employment type were the top 4 variables in terms of importance. Conclusions This study constructed an ANN model to classify schizophrenia cases using web-based survey data. Our model showed a high internal validity. The findings are expected to provide evidence for estimating the prevalence of schizophrenia in the Japanese population and informing future epidemiological studies.
  • KM Saif-Ur-Rahman, Young Jae Hong, Yuanying Li, Masaaki Matsunaga, Zean Song, Masako Shimoda, Abubakr Al-Shoaibi, Yupeng He, Md Razib Mamun, Yukiko Hirano, Chifa Chiang, Yoshihisa Hirakawa, Atsuko Aoyama, Koji Tamakoshi, Atsuhiko Ota, Rei Otsuka, Hiroshi Yatsuya
    Heliyon 9(11) e21931-e21931 2023年11月  

MISC

 9

共同研究・競争的資金等の研究課題

 1
  • 日本学術振興会 科学研究費助成事業 2014年4月 - 2018年3月
    八谷 寛, 青山 温子, 玉腰 浩司, 平川 仁尚, 上村 真由, 太田 充彦, 内藤 久雄, 山田 宏哉, 李 媛英, 大塚 礼, 村田 千代栄, 埴淵 知哉, Esayas Hilawe, 柿崎 真沙子, 埴淵 知哉, 豊嶋 英明, 江 啓発, 山下 健太郎, 王 超辰, 張 燕, 金子 佳世, 何 宇鵬, 鈴木 康司, 加藤 善士, 藤澤 明子, 松永 眞章