Translational Bioinformatics Group, International Center for Genetic Engineering and Biotechnology (ICGEB), Delhi, India.
Dr. Rajendra Prasad Centre for Ophthalmic Sciences, All India Institute of Medical Sciences (AIIMS), New Delhi, India.
Indian J Ophthalmol. 2024 Jul 1;72(7):987-993. doi: 10.4103/IJO.IJO_2009_23. Epub 2024 Mar 8.
To develop machine learning (ML) models, using pre and intraoperative surgical parameters, for predicting trabeculectomy outcomes in the eyes of patients with juvenile-onset primary open-angle glaucoma (JOAG) undergoing primary surgery.
The study included 207 JOAG patients from a single center who met the following criteria: diagnosed between 10 and 40 years of age, with an IOP of >22 mmHg in the eyes on two or more occasions, open angle on gonioscopy in both eyes, with glaucomatous optic neuropathy, and requiring a trabeculectomy for IOP control. Only the patients with a minimum 5-year follow-up after surgery were included in the study.
A successful surgical outcome was defined as IOP ≤18 mmHg (criterion A) or 50% reduction in IOP from baseline (criterion B) 5 years after trabeculectomy. Feature selection techniques were used to select the most important contributory parameters, and tenfold cross-validation was used to evaluate model performance. The ML models were evaluated, compared, and prioritized based on their accuracy, sensitivity, specificity, Matthew correlation coefficient (MCC) index, and mean area under the receiver operating characteristic curve (AUROC). The prioritized models were further optimized by tuning the hyperparameters, and feature contributions were evaluated. In addition, an unbiased relationship analysis among the parameters was performed for clinical utility.
Age at diagnosis, preoperative baseline IOP, duration of preoperative medical treatment, Tenon's thickness, scleral fistulation technique, and intraoperative mitomycin C (MMC) use, were identified as the main contributing parameters for developing efficient models. The three models developed for a consensus-based outcome to predict trabeculectomy success showed an accuracy of >86%, sensitivity of >90%, and specificity of >74%, using tenfold cross-validation. The use of intraoperative MMC and a punch for scleral fistulation compared to the traditional excision with scissors were significantly associated with long-term success of trabeculectomy.
Optimizing surgical parameters by using these ML models might reduce surgical failures associated with trabeculectomy and provide more realistic expectations regarding surgical outcomes in young patients.
利用术前和术中手术参数开发机器学习 (ML) 模型,以预测接受原发性手术的青少年发病原发性开角型青光眼 (JOAG) 患者的小梁切除术结果。
该研究包括来自单一中心的 207 名 JOAG 患者,符合以下标准:10 至 40 岁之间诊断,双眼两次或多次眼压 >22mmHg,双眼房角开放,患有青光眼视神经病变,并需要小梁切除术控制眼压。只有在手术后至少 5 年随访的患者才被纳入研究。
成功的手术结果定义为术后 5 年眼压≤18mmHg(标准 A)或眼压从基线降低 50%(标准 B)。使用特征选择技术选择最重要的贡献参数,并使用 10 倍交叉验证评估模型性能。根据准确性、灵敏度、特异性、马修相关系数 (MCC) 指数和接收者操作特征曲线下平均面积 (AUROC) 对 ML 模型进行评估、比较和优先级排序。通过调整超参数和评估特征贡献对优先级模型进行进一步优化。此外,还进行了参数之间的无偏关系分析,以评估其临床实用性。
诊断时的年龄、术前基线眼压、术前药物治疗持续时间、Tenon 厚度、巩膜瘘管技术以及术中丝裂霉素 C (MMC) 的使用被确定为开发高效模型的主要贡献参数。为了预测小梁切除术的成功,开发了三个基于共识的结果的模型,使用 10 倍交叉验证的准确率>86%,灵敏度>90%,特异性>74%。与传统的剪刀切除相比,术中使用 MMC 和穿孔器进行巩膜瘘管术与小梁切除术的长期成功显著相关。
通过使用这些 ML 模型优化手术参数,可以降低与小梁切除术相关的手术失败率,并为年轻患者的手术结果提供更现实的期望。