基于改进AlexNet的前列腺癌Gleason分级

Zhenfeng Li, Yuchun Li, Yu Zhang, Mengxing Huang, Jing-Gui Chen, Siling Feng, Zhiming Bai
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引用次数: 2

摘要

前列腺癌是男性泌尿生殖系统常见的恶性肿瘤,近年来发病率呈上升趋势。穿刺病理检查Gleason评分是诊断前列腺癌的最终手段。早期发现前列腺癌显然对前列腺癌的治疗和预后非常重要。然而,前列腺癌的病理图像具有复杂的纹理结构,特别是Gleason Grade 3和Gleason Grade 4的区别。因此,Gleason评分为7的病理图像很难区分“3+4”和“4+3”。“3+4”和“4+3”的误判对前列腺癌患者术后生活质量的影响是深远的。为了提高前列腺癌组织病理图像的分类精度,特别是对“3+4”和“4+3”的检测,本文提出了一种基于改进AlexNet的图像分类模型。在ALexNet的基础上,加入Res1_block和Res2_block结构提取病理图像的特征。实验结果表明,该方法能够对前列腺癌病理图像进行自动分类,测试准确率可达78.4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gleason Grading of Prostate Cancer Based on Improved AlexNet
Prostate cancer is a common malignant tumor in male genitourinary system, its morbidity is increasing in recent years. Puncture pathological examination with Gleason scoring is the ultimate means of diagnosing prostate cancer. Early detection of prostate cancer is obviously very important for the treatment and prognosis of the cancer. However, the pathological image of prostate cancer has a complicated texture structure, especially the difference between Gleason Grade 3 and Gleason Grade 4. Therefore, pathological images with a Gleason score of 7 are difficult to distinguish between "3+4" and "4+3". The misjudgment of "3+4" and "4+3" impact on quality of life in patients with prostate cancer after operation can be profound. In order to improve the classification accuracy of histopathological images of prostate cancer especially for detecting "3+4" and "4+3", this paper proposed an image classification model based on improved AlexNet. On the basis of ALexNet, Res1_block and Res2_block structures are added to extract the features of pathological images. Experimental results show that our approach can automatically classify prostate cancer pathological images, and the test accuracy can reach 78.4%.
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