Machine learning-based prediction of anatomical outcome after idiopathic macular hole surgery

التفاصيل البيبلوغرافية
العنوان: Machine learning-based prediction of anatomical outcome after idiopathic macular hole surgery
المؤلفون: Yu Xiao, Songfu Feng, Yijun Hu, Baoyi Liu, Ying Fang, Ling Yuan, Honghua Yu, Tao Li, Xiaomin Zeng, Bin Zhang, Yuqing Wu, Yu Hu, Hongmin Cai, Zhanjie Lin, Wuxiu Quan, Qiaowei Wu
المصدر: Ann Transl Med
سنة النشر: 2021
مصطلحات موضوعية: medicine.medical_specialty, medicine.diagnostic_test, Receiver operating characteristic, genetic structures, business.industry, medicine.medical_treatment, Internal limiting membrane, External validation, Vitrectomy, General Medicine, medicine.disease, Machine learning, computer.software_genre, Surgical planning, eye diseases, Surgery, Optical coherence tomography, medicine, Original Article, Artificial intelligence, sense organs, Internal validation, business, Macular hole, computer
الوصف: Background To develop a machine learning (ML) model for the prediction of the idiopathic macular hole (IMH) status at 1 month after vitrectomy and internal limiting membrane peeling (VILMP) surgery. Methods A total of 288 IMH eyes from four ophthalmic centers were enrolled. All eyes underwent optical coherence tomography (OCT) examinations upon admission and one month after VILMP. First, 1,792 preoperative macular OCT parameters and 768 clinical variables of 256 eyes from two ophthalmic centers were used to train and internally validate ML models. Second, 224 preoperative macular OCT parameters and 96 clinical variables of 32 eyes from the other two centers were utilized for external validation. To fulfill the purpose of predicting postoperative IMH status (i.e., closed or open), five ML algorithms were trained and internally validated by the ten-fold cross-validation method, while the best-performing algorithm was further tested by an external validation set. Results In the internal validation, the mean area under the receiver operating characteristic curves (AUCs) of the five ML algorithms were 0.882-0.951. The AUC, accuracy, sensitivity, and specificity of the best-performing algorithm (i.e., random forest, RF) were 0.951, 0.892, 0.973, and 0.904, respectively. In the external validation, the AUC of RF was 0.940, with an accuracy of 0.875, a specificity of 0.875, and a sensitivity of 0.958. Conclusions Based on the preoperative OCT parameters and clinical variables, our ML model achieved remarkable accuracy in predicting IMH status after VILMP. Therefore, ML models may help optimize surgical planning for IMH patients in the future.
تدمد: 2305-5839
URL الوصول: https://explore.openaire.eu/search/publication?articleId=doi_dedup___::bd35ab94712b07e98dc0ff6af1aeabc4
https://pubmed.ncbi.nlm.nih.gov/34164464
حقوق: OPEN
رقم الأكسشن: edsair.doi.dedup.....bd35ab94712b07e98dc0ff6af1aeabc4
قاعدة البيانات: OpenAIRE