Integrating deep learning for accurate gastrointestinal cancer classification: a comprehensive analysis of MSI and MSS patterns using histopathology data

Abeer A. Wafa, Reham M. Essa, Amr A. Abohany, Hanan E. Abdelkader
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Abstract

Early detection of microsatellite instability (MSI) and microsatellite stability (MSS) is crucial in the fight against gastrointestinal (GI) cancer. MSI is a sign of genetic instability often associated with DNA repair mechanism deficiencies, which can cause (GI) cancers. On the other hand, MSS signifies genomic stability in microsatellite regions. Differentiating between these two states is pivotal in clinical decision-making as it provides prognostic and predictive information and treatment strategies. Rapid identification of MSI and MSS enables oncologists to tailor therapies more accurately, potentially saving patients from unnecessary treatments and guiding them toward regimens with the highest likelihood of success. Detecting these microsatellite status markers at an initial stage can improve patient outcomes and quality of life in GI cancer management. Our research paper introduces a cutting-edge method for detecting early GI cancer using deep learning (DL). Our goal is to identify the optimal model for GI cancer detection that surpasses previous works. Our proposed model comprises four stages: data acquisition, image processing, feature extraction, and classification. We use histopathology images from the Cancer Genome Atlas (TCGA) and Kaggle website with some modifications for data acquisition. In the image processing stage, we apply various operations such as color transformation, resizing, normalization, and labeling to prepare the input image for enrollment in our DL models. We present five different DL models, including convolutional neural networks (CNNs), a hybrid of CNNs-simple RNN (recurrent neural network), a hybrid of CNNs with long short-term memory (LSTM) (CNNs-LSTM), a hybrid of CNNs with gated recurrent unit (GRU) (CNNs-GRU), and a hybrid of CNNs-SimpleRNN-LSTM-GRU. Our empirical results demonstrate that CNNs-SimpleRNN-LSTM-GRU outperforms other models in accuracy, specificity, recall, precision, AUC, and F1, achieving an accuracy of 99.90%. Our proposed methodology offers significant improvements in GI cancer detection compared to recent techniques, highlighting the potential of DL-based approaches for histopathology data. We expect our findings to inspire future research in DL-based GI cancer detection.

Abstract Image

整合深度学习,准确进行胃肠道癌症分类:利用组织病理学数据全面分析 MSI 和 MSS 模式
早期检测微卫星不稳定性(MSI)和微卫星稳定性(MSS)对于抗击胃肠道癌症(GI)至关重要。MSI 是遗传不稳定性的标志,通常与 DNA 修复机制缺陷有关,可导致胃肠道癌症。另一方面,MSS 标志着微卫星区域的基因组稳定性。区分这两种状态在临床决策中至关重要,因为它提供了预后和预测信息以及治疗策略。快速识别 MSI 和 MSS 使肿瘤学家能够更准确地定制治疗方案,从而使患者免于不必要的治疗,并指导他们采用最有可能成功的治疗方案。在消化道癌症治疗的初始阶段检测这些微卫星状态标记物可以改善患者的预后和生活质量。我们的研究论文介绍了一种利用深度学习(DL)检测早期消化道癌症的前沿方法。我们的目标是找出消化道癌症检测的最佳模型,以超越之前的研究成果。我们提出的模型包括四个阶段:数据采集、图像处理、特征提取和分类。我们使用来自癌症基因组图谱(TCGA)和 Kaggle 网站的组织病理学图像,并对其进行了一些修改以获取数据。在图像处理阶段,我们应用各种操作,如颜色转换、大小调整、归一化和标记,以准备输入图像,供我们的 DL 模型使用。我们提出了五种不同的 DL 模型,包括卷积神经网络(CNN)、CNN-简单 RNN(递归神经网络)混合模型、CNN-长短时记忆(LSTM)混合模型(CNNs-LSTM)、CNN-门控递归单元(GRU)混合模型(CNNs-GRU)以及 CNN-SimpleRNN-LSTM-GRU 混合模型。实证结果表明,CNNs-SimpleRNN-LSTM-GRU 在准确度、特异性、召回率、精确度、AUC 和 F1 方面均优于其他模型,准确度达到 99.90%。与最近的技术相比,我们提出的方法在消化道癌症检测方面有显著改进,突出了基于 DL 的方法在组织病理学数据方面的潜力。我们希望我们的研究结果能对未来基于 DL 的消化道癌症检测研究有所启发。
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