Grad-CAM Enabled Breast Cancer Classification with a 3D Inception-ResNet V2: Empowering Radiologists with Explainable Insights.

IF 4.5 2区 医学 Q1 ONCOLOGY
Cancers Pub Date : 2024-10-30 DOI:10.3390/cancers16213668
Fatma M Talaat, Samah A Gamel, Rana Mohamed El-Balka, Mohamed Shehata, Hanaa ZainEldin
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引用次数: 0

Abstract

Breast cancer (BCa) poses a severe threat to women's health worldwide as it is the most frequently diagnosed type of cancer and the primary cause of death for female patients. The biopsy procedure remains the gold standard for accurate and effective diagnosis of BCa. However, its adverse effects, such as invasiveness, bleeding, infection, and reporting time, keep this procedure as a last resort for diagnosis. A mammogram is considered the routine noninvasive imaging-based procedure for diagnosing BCa, mitigating the need for biopsies; however, it might be prone to subjectivity depending on the radiologist's experience. Therefore, we propose a novel, mammogram image-based BCa explainable AI (BCaXAI) model with a deep learning-based framework for precise, noninvasive, objective, and timely manner diagnosis of BCa. The proposed BCaXAI leverages the Inception-ResNet V2 architecture, where the integration of explainable AI components, such as Grad-CAM, provides radiologists with valuable visual insights into the model's decision-making process, fostering trust and confidence in the AI-based system. Based on using the DDSM and CBIS-DDSM mammogram datasets, BCaXAI achieved exceptional performance, surpassing traditional models such as ResNet50 and VGG16. The model demonstrated superior accuracy (98.53%), recall (98.53%), precision (98.40%), F1-score (98.43%), and AUROC (0.9933), highlighting its effectiveness in distinguishing between benign and malignant cases. These promising results could alleviate the diagnostic subjectivity that might arise as a result of the experience-variability between different radiologists, as well as minimize the need for repetitive biopsy procedures.

使用 3D Inception-ResNet V2 进行 Grad-CAM 乳腺癌分类:用可解释的洞察力增强放射医师的能力。
乳腺癌(BCa)是最常见的癌症类型,也是导致女性患者死亡的主要原因,对全球女性健康构成严重威胁。活组织检查仍是准确有效诊断乳腺癌的金标准。然而,活检的不良影响,如侵入性、出血、感染和报告时间,使其成为诊断的最后手段。乳房 X 光检查被认为是诊断 BCa 的常规无创影像检查方法,可减轻活组织检查的必要性;然而,根据放射科医生的经验,这种检查方法可能容易受到主观因素的影响。因此,我们提出了一种新颖的、基于乳房 X 射线图像的 BCa 可解释人工智能(BCaXAI)模型,该模型采用基于深度学习的框架,可精确、无创、客观、及时地诊断 BCa。拟议的 BCaXAI 利用 Inception-ResNet V2 架构,集成了 Grad-CAM 等可解释的人工智能组件,为放射科医生提供了对模型决策过程的宝贵可视化见解,增强了他们对基于人工智能的系统的信任和信心。在使用 DDSM 和 CBIS-DDSM 乳房 X 光数据集的基础上,BCaXAI 取得了优异的性能,超过了 ResNet50 和 VGG16 等传统模型。该模型的准确率(98.53%)、召回率(98.53%)、精确率(98.40%)、F1-score(98.43%)和 AUROC(0.9933)均优于传统模型,突显了其在区分良性和恶性病例方面的有效性。这些令人鼓舞的结果可以减轻因不同放射科医生的经验差异而可能产生的诊断主观性,并最大限度地减少重复活检程序的需要。
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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来源期刊
Cancers
Cancers Medicine-Oncology
CiteScore
8.00
自引率
9.60%
发文量
5371
审稿时长
18.07 days
期刊介绍: Cancers (ISSN 2072-6694) is an international, peer-reviewed open access journal on oncology. It publishes reviews, regular research papers and short communications. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced.
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