Comparison Performance of Prostate Cell Images Classification using Pretrained Convolutional Neural Network Models

Y. Jusman, Muhammad Ahdan Fawwaz Nurkholid, Dhimas Arief Darmawan, Feriandri Utomo
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引用次数: 1

Abstract

Prostate cancer is the most common cancer in men in 2019. In that year, in the United States 174,650 men (20%) had prostate cancer and the remaining 696.32 men (80%) had other cancers (lung, bronchus) etc). In cancer diagnosis, there are several problems such as errors in reporting the diagnosis and the need for a long time. Artificial intelligence has long been known to facilitate the detection process, but a comparison analysis of the model is needed to get more optimal results. This study aims to compare the performance of two pretrained models (i.e. AlexNet and GoogLeNet). The data used is the image of prostate cells taken from a light microscope at the Universitas Indonesia (UI) Hospital. This study uses k-fold cross-validation to validate the accuracy of a model used. Performance evaluation of pretrained models is based on performance metrics: accuracy, precision, recall (sensitivity), specificity and f-score and running time in the testing process. The best accuracy is obtained by GoogLeNet with 99.63% and 97.74% and the lowest accuracy is obtained by AlexNet with 99.13% and 94.11%. During the training, AlexNet had a shorter time with 47 seconds than GoogLeNet with 112 seconds. In testing times, AlexNet was also faster with 0.307 seconds than GoogLeNet with 0.372. This research is expected to assist researchers (pathologists, physician assistants, etc.) in choosing the right architecture for the classification of prostate cancer images in terms of time and accuracy.
使用预训练卷积神经网络模型进行前列腺细胞图像分类的性能比较
前列腺癌是2019年男性最常见的癌症。那一年,美国有174,650名男性(20%)患有前列腺癌,其余696.32名男性(80%)患有其他癌症(肺癌、支气管癌)。在癌症诊断中,存在报告诊断错误、需要较长时间等问题。人们早就知道人工智能可以促进检测过程,但需要对模型进行比较分析,以获得更优的结果。本研究旨在比较两种预训练模型(即AlexNet和GoogLeNet)的性能。所使用的数据是在印度尼西亚大学(UI)医院的光学显微镜下拍摄的前列腺细胞图像。本研究使用k-fold交叉验证来验证所使用模型的准确性。预训练模型的性能评估基于性能指标:准确性、精密度、召回率(灵敏度)、特异性和f分数以及测试过程中的运行时间。GoogLeNet的准确率最高,分别为99.63%和97.74%,AlexNet的准确率最低,分别为99.13%和94.11%。在训练过程中,AlexNet的时间为47秒,而GoogLeNet的时间为112秒。在测试时间上,AlexNet也比GoogLeNet快,为0.307秒,为0.372秒。本研究旨在帮助研究人员(病理学家,医师助理等)在时间和准确性方面选择正确的前列腺癌图像分类架构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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