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眼外伤评分与眼球结构参数在眼外伤愈后视力评估中的价值 被引量:1
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作者 周智露 王杰 +2 位作者 夏文涛 陈捷敏 郝虹霞 《国际眼科杂志》 CAS 北大核心 2023年第2期261-266,共6页
目的:探讨眼外伤评分(OTS)、初诊视力与眼球结构参数在眼外伤愈后视力评估中的价值。方法:选取司法鉴定科学研究院2015-06/2021-06受理并出具明确鉴定意见的眼外伤者302例302眼,根据眼外伤愈后最佳矫正视力(BCVA)进行分组,Ⅰ组63例63眼,... 目的:探讨眼外伤评分(OTS)、初诊视力与眼球结构参数在眼外伤愈后视力评估中的价值。方法:选取司法鉴定科学研究院2015-06/2021-06受理并出具明确鉴定意见的眼外伤者302例302眼,根据眼外伤愈后最佳矫正视力(BCVA)进行分组,Ⅰ组63例63眼,BCVA<3.7;Ⅱ组70例70眼3.7≤BCVA<4.5;Ⅲ组78例78眼,4.5≤BCVA<4.9;Ⅳ组91例91眼,BCVA≥4.9。另选取纳入的眼外伤者健眼77例77眼作为对照组即Ⅴ组。分析纳入研究对象的眼外伤愈后BCVA和眼球结构参数及其相关性,并使用IBM SPSS Modeler 18.0软件建立预测眼外伤愈后视力的随机森林(RF)和支持向量机(SVM)模型。结果:纳入眼外伤者初诊视力、OTS评分、眼外伤愈后角膜分级、晶状体分级、眼底分级、视神经周围神经纤维层厚度与眼外伤愈后BCVA均存在相关性(P<0.01)。除中央视网膜厚度外,各组眼球结构参数均有差异(P<0.001)。SVM模型较RF模型预测眼外伤愈后视力的准确率高,误差在0.15以内者准确率达80%以上。结论:OTS评分与眼球结构检查可为眼外伤后视觉功能障碍的法医临床鉴定提供有效信息,在鉴别伪装视觉功能障碍中具有价值。 展开更多
关键词 眼损伤 眼外伤评分 眼球结构参数 视力预测 法医临床学
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Predicting visual acuity with machine learning in treated ocular trauma patients 被引量:1
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作者 Zhi-Lu Zhou Yi-Fei Yan +8 位作者 Jie-Min Chen Rui-Jue Liu xiao-Ying Yu Meng Wang Hong-xia Hao Dong-Mei Liu Qi Zhang Jie Wang wen-tao xia 《International Journal of Ophthalmology(English edition)》 SCIE CAS 2023年第7期1005-1014,共10页
AIM:To predict best-corrected visual acuity(BCVA)by machine learning in patients with ocular trauma who were treated for at least 6mo.METHODS:The internal dataset consisted of 850 patients with 1589 eyes and an averag... AIM:To predict best-corrected visual acuity(BCVA)by machine learning in patients with ocular trauma who were treated for at least 6mo.METHODS:The internal dataset consisted of 850 patients with 1589 eyes and an average age of 44.29y.The initial visual acuity was 0.99 log MAR.The test dataset consisted of 60 patients with 100 eyes collected while the model was optimized.Four different machine-learning algorithms(Extreme Gradient Boosting,support vector regression,Bayesian ridge,and random forest regressor)were used to predict BCVA,and four algorithms(Extreme Gradient Boosting,support vector machine,logistic regression,and random forest classifier)were used to classify BCVA in patients with ocular trauma after treatment for 6mo or longer.Clinical features were obtained from outpatient records,and ocular parameters were extracted from optical coherence tomography images and fundus photographs.These features were put into different machine-learning models,and the obtained predicted values were compared with the actual BCVA values.The best-performing model and the best variable selected were further evaluated in the test dataset.RESULTS:There was a significant correlation between the predicted and actual values[all Pearson correlation coefficient(PCC)>0.6].Considering only the data from the traumatic group(group A)into account,the lowest mean absolute error(MAE)and root mean square error(RMSE)were 0.30 and 0.40 log MAR,respectively.In the traumatic and healthy groups(group B),the lowest MAE and RMSE were 0.20 and 0.33 log MAR,respectively.The sensitivity was always higher than the specificity in group A,in contrast to the results in group B.The classification accuracy and precision were above 0.80 in both groups.The MAE,RMSE,and PCC of the test dataset were 0.20,0.29,and 0.96,respectively.The sensitivity,precision,specificity,and accuracy of the test dataset were 0.83,0.92,0.95,and 0.90,respectively.CONCLUSION:Predicting BCVA using machine-learning models in patients with treated ocular trauma is accurate and helpful in the identification of visual dysfunction. 展开更多
关键词 ocular trauma predicting visiual acuity best-corrected visual acuity visual dysfunction machine learning
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