Developing Artificial Intelligence Models for Extracting Oncologic Outcomes from Japanese Electronic Health Records

被引:0
|
作者
Kenji Araki
Nobuhiro Matsumoto
Kanae Togo
Naohiro Yonemoto
Emiko Ohki
Linghua Xu
Yoshiyuki Hasegawa
Daisuke Satoh
Ryota Takemoto
Taiga Miyazaki
机构
[1] University of Miyazaki Hospital,Patient Advocacy Center
[2] University of Miyazaki,Division of Respirology, Rheumatology, Infectious Diseases, and Neurology, Department of Internal Medicine
[3] Health & Value,Oncology Medical Affairs
[4] Pfizer Japan Inc.,Manufacturing IT Innovation Sector
[5] Pfizer Japan Inc,Research and Development Headquarters
[6] NTT DATA Corporation,undefined
[7] NTT DATA Corporation,undefined
来源
Advances in Therapy | 2023年 / 40卷
关键词
Artificial intelligence; BERT; Electronic health records database; Lung cancer; Real-world data; Retrospective study;
D O I
暂无
中图分类号
学科分类号
摘要
The use of artificial intelligence (AI) to derive health outcomes from large electronic health records is not well established. Thus, we built three different AI models: Bidirectional Encoder Representations from Transformers (BERT), Naïve Bayes, and Longformer to serve this purpose. Initially, we developed these models based on data from the University of Miyazaki Hospital (UMH) and later improved them using the Life Data Initiative (LDI) data set of six hospitals. The performance of the BERT model was better than the other two, and it showed similar results when it was applied to the LDI data set. The Kaplan–Meier plots of time to progression of disease for the predicted data by the BERT model showed similar trends to those for the manually curated data. In summary, we developed an AI model to extract health outcomes using a large electronic health database in this study; however, the performance of the AI model could be improved using more training data.
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页码:934 / 950
页数:16
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