Prediction model of ocular metastasis from primary liver cancer: Machine learning‐based development and interpretation study

Author:

Sun Jin‐Qi1,Wu Shi‐Nan23ORCID,Mou Zheng‐Lin2ORCID,Wen Jia‐Yi2,Wei Hong2,Zou Jie2,Li Qing‐Jian3,Liu Zhao‐Lin4,Xu San Hua2,Kang Min2,Ling Qian2,Huang Hui2,Chen Xu5,Wang Yi‐Xin6,Liao Xu‐Lin7,Tan Gang4,Shao Yi2ORCID

Affiliation:

1. Fuxing Hospital, The Eighth Clinical Medical College Capital Medical University Beijing People's Republic of China

2. Department of Ophthalmology The First Affiliated Hospital of Nanchang University, Jiangxi Branch of the National Clinical Research Center for Ocular Disease Nanchang People's Republic of China

3. Fujian Provincial Key Laboratory of Ophthalmology and Visual Science, Eye Institute of Xiamen University School of Medicine, Xiamen University Xiamen People's Republic of China

4. Department of Ophthalmology The First Affiliated Hospital of University of South China, Hunan Branch of The National Clinical Research Center for Ocular Disease Hengyang People's Republic of China

5. Department of Ophthalmology and Visual Sciences Maastricht University Maastricht Netherlands

6. School of Optometry and Vision Sciences Cardiff University Cardiff UK

7. Department of Ophthalmology and Visual Sciences The Chinese University of Hong Kong Hong Kong People's Republic of China

Abstract

AbstractBackgroundOcular metastasis (OM) is a rare metastatic site of primary liver cancer (PLC). The purpose of this study was to establish a clinical predictive model of OM in PLC patients based on machine learning (ML).MethodsWe retrospectively collected the clinical data of 1540 PLC patients and divided it into a training set and an internal test set in a 7:3 proportion. PLC patients were divided into OM and non‐ocular metastasis (NOM) groups, and univariate logistic regression analysis was performed between the two groups. The variables with univariate logistic analysis p < 0.05 were selected for the ML model. We constructed six ML models, which were internally verified by 10‐fold cross‐validation. The prediction performance of each ML model was evaluated by receiver operating characteristic curves (ROCs). We also constructed a web calculator based on the optimal performance ML model to personalize the risk probability for OM.ResultsSix variables were selected for the ML model. The extreme gradient boost (XGB) ML model achieved the optimal differential diagnosis ability, with an area under the curve (AUC) = 0.993, accuracy = 0.992, sensitivity = 0.998, and specificity = 0.984. Based on these results, an online web calculator was constructed by using the XGB ML model to help clinicians diagnose and treat the risk probability of OM in PLC patients. Finally, the Shapley additive explanations (SHAP) library was used to obtain the six most important risk factors for OM in PLC patients: CA125, ALP, AFP, TG, CA199, and CEA.ConclusionWe used the XGB model to establish a risk prediction model of OM in PLC patients. The predictive model can help identify PLC patients with a high risk of OM, provide early and personalized diagnosis and treatment, reduce the poor prognosis of OM patients, and improve the quality of life of PLC patients.

Funder

National Natural Science Foundation of China

Publisher

Wiley

Subject

Cancer Research,Radiology, Nuclear Medicine and imaging,Oncology

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