School of Computer Science and Technology, Xidian University, No.2 South Taibai Rd, Xi'an, 710071, China.
State Key Laboratory of Ophthalmology, Zhongshan Ophthalmic Center, Sun Yat-sen University, Guangzhou, 510060, China.
J Transl Med. 2019 Jan 3;17(1):2. doi: 10.1186/s12967-018-1758-2.
The common treatment for pediatric cataracts is to replace the cloudy lens with an artificial one. However, patients may suffer complications (severe lens proliferation into the visual axis and abnormal high intraocular pressure; SLPVA and AHIP) within 1 year after surgery and factors causing these complications are unknown.
Apriori algorithm is employed to find association rules related to complications. We use random forest (RF) and Naïve Bayesian (NB) to predict the complications with datasets preprocessed by SMOTE (synthetic minority oversampling technique). Genetic feature selection is exploited to find real features related to complications.
Average classification accuracies in three binary classification problems are over 75%. Second, the relationship between the classification performance and the number of random forest tree is studied. Results show except for gender and age at surgery (AS); other attributes are related to complications. Except for the secondary IOL placement, operation mode, AS and area of cataracts; other attributes are related to SLPVA. Except for the gender, operation mode, and laterality; other attributes are related to the AHIP. Next, the association rules related to the complications are mined out. Then additional 50 data were used to test the performance of RF and NB, both of then obtained the accuracies of over 65% for three classification problems. Finally, we developed a webserver to assist doctors.
The postoperative complications of pediatric cataracts patients can be predicted. Then the factors related to the complications are found. Finally, the association rules that is about the complications can provide reference to doctors.
小儿白内障的常见治疗方法是用人工晶状体替换混浊的晶状体。然而,患者在手术后 1 年内可能会出现并发症(严重的晶状体增殖到视轴和异常高的眼内压;SLPVA 和 AHIP),导致这些并发症的因素尚不清楚。
采用先验算法寻找与并发症相关的关联规则。我们使用随机森林(RF)和朴素贝叶斯(NB)对经过 SMOTE(合成少数过采样技术)预处理的数据集进行预测并发症。遗传特征选择用于寻找与并发症相关的真实特征。
在三个二分类问题中,平均分类准确率均超过 75%。其次,研究了分类性能与随机森林树数量的关系。结果表明,除性别和手术时年龄(AS)外,其他属性与并发症有关。除继发性 IOL 放置、手术方式、AS 和白内障面积外,其他属性与 SLPVA 有关。除性别、手术方式和侧别外,其他属性与 AHIP 有关。然后,挖掘出与并发症相关的关联规则。然后,使用另外 50 个数据来测试 RF 和 NB 的性能,这两个模型在三个分类问题中的准确率都超过了 65%。最后,我们开发了一个网络服务器来辅助医生。
可以预测小儿白内障患者的术后并发症,然后找到与并发症相关的因素,最后,与并发症相关的关联规则可以为医生提供参考。