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Gaussian Bayes classifier for medical diagnosis and grading: Application to diabetic retinopathy

机译:高斯贝叶斯分类器进行医学诊断和分级:在糖尿病视网膜病疗法中的应用

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Data from medical imaging system need to be analysed for diagnostics and clinical purposes. In a computerized system, the analysis normally involves classification process to determine disease and its condition. In an earlier work based on a database of 315 fundus images (FINDeRS), it is found that the foveal avascular zone (FAZ) enlargement strongly correlates with diabetic retinopathy (DR) progression having a correlation factor up to 0.883 at significant levels better than 0.01. However, it is also found that the FAZ areas can belong to different DR severity but with different levels of certainty having a Gaussian distribution. In this research work, the suitability of the Gaussian Bayes classifier in determining DR severity level is investigated. A v-fold cross-validation (VFCF) process is applied to the FINDeRS database to evaluate the performance of the classifier. It is shown that the classifier achieved sensitivity of >84%, specificity of >97% and accuracy of >95% for all DR stages. At high values of sensitivity (>95%), specificity (>97%) and accuracy (>98%) obtained for No DR and Severe NPDR/PDR stages, the Gaussian Bayes classifier is suitable as part of a computerised DR grading and monitoring system for early detection of DR and for effective treatment of severe cases.
机译:需要分析来自医学成像系统的数据以进行诊断和临床目的。在计算机化系统中,分析通常涉及分类过程以确定疾病及其状况。在早期的工作基础上,基于315眼底图像(Finders)的数据库,发现心脏缺血区(FAZ)扩大与糖尿病视网膜病变(DR)进展强烈相关,其相关因子高达0.883,优于0.01 。然而,还发现FAZ地区可以属于不同的DR严重程度,但具有不同的确定性水平,具有高斯分布。在这项研究工作中,研究了高斯贝叶斯分类器在确定DR严重程度时的适用性。 V-Fold交叉验证(VFCF)进程应用于Finders数据库以评估分类器的性能。结果表明,分类器达到了> 84%,特异性> 97%的敏感性,精度为所有DR阶段> 95%。高斯贝叶斯分类器的高敏感性(> 97%),特异性(> 97%)和精度(> 98%),高斯贝叶斯分类器适用于电脑DR分级和监控的一部分用于早期检测博士的系统和有效治疗严重病例。

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