从组织病理图像中检测乳腺浸润性导管癌的集成学习方法

IF 2.9 4区 医学 Q2 PATHOLOGY
Himanish Shekhar Das, Kasmika Borah, Kangkana Bora
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引用次数: 0

摘要

浸润性导管癌是乳腺恶性肿瘤中最常见、最具侵袭性的一种,需要准确、及时的诊断才能有效治疗。虽然被认为是金标准,但传统的组织病理学诊断受制于观察者之间和观察者内部的变异性,可能影响患者的预后。本研究提出了一种集成学习方法来分类浸润性导管癌,以解决这些挑战。该方法结合了多个深度学习模型的优点,提高了诊断的准确性和鲁棒性。我们使用了一组不同的预训练卷积神经网络,即ResNet50、Xception、MobileNetV2、VGG16和VGG19,每个神经网络都对乳腺组织切片的组织病理学图像进行了训练。本文比较了这五种不同的深度学习模型,并给出了相应的推理结果。集成和迁移学习的微调方法也被用于提取最佳结果。这些模型使用评估指标(如准确性)进行评估,以查看哪个模型的工作效果最好。所提出的加权平均集成算法准确率达到97.27 %。在所有模型中,ResNet50模型在识别浸润性导管癌方面优于其他模型。因此,对于特定分辨率的图像,当精度是最重要的考虑因素时,ResNet50是首选模型,加权平均集成方法提高了所提工作的性能。我们的结果表明,所提出的集成方法减少了诊断的可变性,提高了准确性。这种方法有望提高乳腺癌诊断的准确性,可能导致更好的患者管理和结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble learning approach for detecting breast invasive ductal carcinoma from histopathological images
Invasive ductal carcinoma is a type of breast cancer that is one of the most frequent and aggressive forms of breast malignancy, necessitating accurate and timely diagnosis for effective treatment. Though considered the gold standard, traditional histopathological diagnosis is subject to inter-observer and intra-observer variability, potentially impacting patient outcomes. This study proposed an ensemble learning approach for classifying invasive ductal carcinoma to address these challenges. The proposed method combines the strengths of multiple deep-learning models to enhance diagnostic accuracy and robustness. We employed a diverse set of pre-trained convolutional neural networks, viz, ResNet50, Xception, MobileNetV2, VGG16, and VGG19, each trained on histopathological images of breast histology slides. These five different deep learning models were compared in this work, and the resulting inference results are also shown. Ensemble and a fine-tuning approach to transfer learning were also used to extract the best results. These models were evaluated using evaluation metrics like accuracy to see which one does the job best. The proposed weighted average ensemble algorithm achieved 97.27 % accuracy. Among all models, the ResNet50 model outperforms the other models in identifying invasive ductal carcinoma. Therefore, ResNet50 is the preferred model when accuracy is the top concern for a particular resolution image, and the weighted average ensemble approach enhances the performance of the proposed work. Our results indicate that the proposed ensemble approach decreases variability in diagnoses and advancements in accuracy. This method holds promise for enhancing the precision of breast cancer diagnostics, potentially leading to better patient management and outcomes.
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来源期刊
CiteScore
5.00
自引率
3.60%
发文量
405
审稿时长
24 days
期刊介绍: Pathology, Research and Practice provides accessible coverage of the most recent developments across the entire field of pathology: Reviews focus on recent progress in pathology, while Comments look at interesting current problems and at hypotheses for future developments in pathology. Original Papers present novel findings on all aspects of general, anatomic and molecular pathology. Rapid Communications inform readers on preliminary findings that may be relevant for further studies and need to be communicated quickly. Teaching Cases look at new aspects or special diagnostic problems of diseases and at case reports relevant for the pathologist''s practice.
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