Diabatic Retinopathy (DR) is one of the leading cause of sight inefficiency for diabetic patients. The clinical diagnostic results and several outcome of eye testing methods reviled a set of observations that eases th...
详细信息
ISBN:
(纸本)9781509037049
Diabatic Retinopathy (DR) is one of the leading cause of sight inefficiency for diabetic patients. The clinical diagnostic results and several outcome of eye testing methods reviled a set of observations that eases the decision making in the case of diabetic retinopathy for the doctor, therapist. machinelearning, a branch of artificial intelligence is applied in clinical data analytic as it can detect patterns in data, and then use these uncovered patterns to predict future data or perform some kind of decision making under uncertainty. In case of DR finding the co-relation between the depth of affection and the clinical result is very much critical, as several parameters are need to be taken into consideration for optimal decision making by the therapist. In this paper we have reviewed the performance of a set of machinelearningalgorithms and verify their performance for a particular DR data set.
Diabatic Retinopathy (DR) is one of the leading cause of sight inefficiency for diabetic patients. The clinical diagnostic results and several outcome of eye testing methods reviled a set of observations that eases th...
详细信息
ISBN:
(纸本)9781509037056
Diabatic Retinopathy (DR) is one of the leading cause of sight inefficiency for diabetic patients. The clinical diagnostic results and several outcome of eye testing methods reviled a set of observations that eases the decision making in the case of diabetic retinopathy for the doctor, therapist. machinelearning, a branch of artificial intelligence is applied in clinical data analytic as it can detect patterns in data, and then use these uncovered patterns to predict future data or perform some kind of decision making under uncertainty. In case of DR finding the co-relation between the depth of affection and the clinical result is very much critical, as several parameters are need to be taken into consideration for optimal decision making by the therapist. In this paper we have reviewed the performance of a set of machinelearningalgorithms and verify their performance for a particular DR data set.
暂无评论