IMPLEMENTATION OF THE ROUGH SET METHOD WITH A DEEP LEARNING APPROACH IN THE PROCESS OF DIAGNOSING OTITIS DISEASE

Irzal Arief Wisky, Teri Ade Putra
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Abstract

Otitis is a common health problem in the human ear and often requires a quick and accurate diagnosis. Deep learning is a method in the computer field to provide performance in classification. This research aims to develop an analysis model using a Deep Learning (DL) approach in diagnosing otitis. The method used in this development involves the performance of the Rough Set (RS) and Artificial Neural Network (ANN) methods to provide optimal analysis output. The research dataset refers to the clinical diagnosis of otitis patients which consists of 3 types, namely acute, effusion, and chronic. The test results of the analysis model developed using the DL approach were able to provide quite good output with an accuracy level of 99%. These results are based on the analysis pattern obtained based on the performance of the RS method. Based on these results, it can be concluded that the analytical model developed provides maximum and better results compared to the previous model based on the output and presentation of a systematic process in classifying otitis disease.
在中耳炎诊断过程中使用深度学习方法实施粗糙集方法
耳炎是人类耳朵常见的健康问题,通常需要快速准确的诊断。深度学习是计算机领域的一种方法,可提供分类性能。本研究旨在开发一种使用深度学习(DL)方法诊断中耳炎的分析模型。开发中使用的方法涉及粗糙集(RS)和人工神经网络(ANN)方法的性能,以提供最佳分析输出。研究数据集是指耳炎患者的临床诊断,包括急性、流脓和慢性三种类型。使用 DL 方法开发的分析模型的测试结果能够提供相当不错的输出,准确率达到 99%。这些结果是根据 RS 方法的性能所获得的分析模式得出的。基于这些结果,可以得出结论,与之前的模型相比,基于系统过程的输出和分类,所开发的分析模型提供了最大和更好的结果。
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