In-Hospital Cancer Mortality Prediction by Multimodal Learning of Non-English Clinical Texts

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Abstract

Predicting important outcomes in patients with complex medical conditions using multimodal electronic medical records remains challenge. We trained a machine learning model to predict the inpatient prognosis of cancer patients using EMR data with Japanese clinical text records, which has been considered difficult due to its high context. We confirmed high accuracy of the mortality prediction model using clinical text in addition to other clinical data, suggesting applicability of this method to cancer.

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APA

Oyama, S., Furukawa, T., Misawa, S., Kano, R., Yarimizu, H., Taniguchi, T., … Shiratori, Y. (2023). In-Hospital Cancer Mortality Prediction by Multimodal Learning of Non-English Clinical Texts. In Studies in Health Technology and Informatics (Vol. 302, pp. 821–822). IOS Press BV. https://doi.org/10.3233/SHTI230276

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