Convolutional Neural Network-Based Automatic Classification of Colorectal and Prostate Tumor Biopsies Using Multispectral Imagery: System Development Study.

Remy Peyret, Duaa alSaeed, Fouad Khelifi, Nadia Al-Ghreimil, Heyam Al-Baity, Ahmed Bouridane
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Abstract

Background: Colorectal and prostate cancers are the most common types of cancer in men worldwide. To diagnose colorectal and prostate cancer, a pathologist performs a histological analysis on needle biopsy samples. This manual process is time-consuming and error-prone, resulting in high intra- and interobserver variability, which affects diagnosis reliability.

Objective: This study aims to develop an automatic computerized system for diagnosing colorectal and prostate tumors by using images of biopsy samples to reduce time and diagnosis error rates associated with human analysis.

Methods: In this study, we proposed a convolutional neural network (CNN) model for classifying colorectal and prostate tumors from multispectral images of biopsy samples. The key idea was to remove the last block of the convolutional layers and halve the number of filters per layer.

Results: Our results showed excellent performance, with an average test accuracy of 99.8% and 99.5% for the prostate and colorectal data sets, respectively. The system showed excellent performance when compared with pretrained CNNs and other classification methods, as it avoids the preprocessing phase while using a single CNN model for the whole classification task. Overall, the proposed CNN architecture was globally the best-performing system for classifying colorectal and prostate tumor images.

Conclusions: The proposed CNN architecture was detailed and compared with previously trained network models used as feature extractors. These CNNs were also compared with other classification techniques. As opposed to pretrained CNNs and other classification approaches, the proposed CNN yielded excellent results. The computational complexity of the CNNs was also investigated, and it was shown that the proposed CNN is better at classifying images than pretrained networks because it does not require preprocessing. Thus, the overall analysis was that the proposed CNN architecture was globally the best-performing system for classifying colorectal and prostate tumor images.

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基于卷积神经网络的多光谱图像结直肠癌和前列腺肿瘤活检自动分类:系统开发研究。
背景:结直肠癌和前列腺癌是全球男性最常见的癌症类型。要诊断结直肠癌和前列腺癌,病理学家需要对针刺活检样本进行组织学分析。这种手工操作既费时又容易出错,导致观察者内部和观察者之间的差异很大,影响了诊断的可靠性:本研究旨在开发一种利用活检样本图像诊断结直肠肿瘤和前列腺肿瘤的计算机化自动系统,以减少人工分析所需的时间和诊断错误率:在这项研究中,我们提出了一种卷积神经网络(CNN)模型,用于根据活检样本的多光谱图像对结直肠肿瘤和前列腺肿瘤进行分类。其主要思路是移除卷积层的最后一个区块,并将每层的滤波器数量减半:结果:我们的研究结果表明系统性能卓越,前列腺和结直肠数据集的平均测试准确率分别为 99.8% 和 99.5%。与预训练的 CNN 和其他分类方法相比,该系统表现出色,因为它避免了预处理阶段,同时使用单一 CNN 模型完成整个分类任务。总体而言,所提出的 CNN 架构是全球范围内对结直肠癌和前列腺肿瘤图像进行分类的最佳系统:我们详细介绍了所提出的 CNN 架构,并将其与之前训练的用作特征提取器的网络模型进行了比较。这些 CNN 还与其他分类技术进行了比较。与预训练的 CNN 和其他分类方法相比,所提出的 CNN 取得了优异的结果。此外,还对 CNN 的计算复杂性进行了研究,结果表明,与预训练网络相比,拟议的 CNN 在图像分类方面更胜一筹,因为它不需要进行预处理。因此,总体分析结果表明,在对结直肠和前列腺肿瘤图像进行分类方面,所提出的 CNN 架构是全球表现最佳的系统。
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