4.6 Article

Machine learning for the prediction of bone metastasis in patients with newly diagnosed thyroid cancer

期刊

CANCER MEDICINE
卷 10, 期 8, 页码 2802-2811

出版社

WILEY
DOI: 10.1002/cam4.3776

关键词

bone metastasis; machine learning; random forest; SEER; thyroid cancer

类别

资金

  1. Jiangxi Provincial Health Commission [20161024]
  2. Jiangxi Provincial Department of Science and Technology [20192ACBL21041, 20202BBGL73015]

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The study aimed to establish a machine learning prediction model for bone metastasis in newly diagnosed thyroid cancer patients. A total of 17,138 patients were included, with 166 (0.97%) developing bone metastases. The RF model had better predictive performance compared to other models, with an AUC of 0.917, accuracy of 0.904, recall rate of 0.833, and specificity of 0.905.
Objectives This study aimed to establish a machine learning prediction model that can be used to predict bone metastasis (BM) in patients with newly diagnosed thyroid cancer (TC). Methods Demographic and clinicopathologic variables of TC patients in the Surveillance, Epidemiology, and End Results database from 2010 to 2016 were retrospectively analyzed. On this basis, we developed a random forest (RF) algorithm model based on machine-learning. The area under receiver operating characteristic curve (AUC), accuracy score, recall rate, and specificity are used to evaluate and compare the prediction performance of the RF model and the other model. Results A total of 17,138 patients were included in the study, with 166 (0.97%) developed bone metastases. Grade, T stage, histology, race, sex, age, and N stage were the important prediction features of BM. The RF model has better predictive performance than the other model (AUC: 0.917, accuracy: 0.904, recall rate: 0.833, and specificity: 0.905). Conclusions The RF model constructed in this study could accurately predict bone metastases in TC patients, which may provide clinicians with more personalized clinical decision-making recommendations. Machine learning technology has the potential to improve the development of BM prediction models in TC patients.

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