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Breast Cancer Histopathological Image Classification: A Deep Learning Approach

机译:乳腺癌组织病理学图像分类:一种深度学习方法

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Breast cancer remains the most common type of cancer and the leading cause of cancer-induced mortality among women with 2.4 million new cases diagnosed and 523,000 deaths per year. Historically, a diagnosis has been initially performed using clinical screening followed by histopathological analysis. Automated classification of cancers using histopathological images is a challenging task of accurate detection of tumor sub-types. This process could be facilitated by machine learning approaches, which may be more reliable and economical compared to conventional methods. To prove this principle, we applied fine-tuned pre-trained deep neural networks and first attempted to discriminate between different cancer types. Using 6,402 tissue microarrays (TMAs) samples, models including the ResNet V1 50 pretrained model correctly predicted 99.8% of the four cancer types including breast, bladder, lung, and lymphoma. Then, for classification of breast cancer sub-types, this approach was applied to 7,909 images of 82 patients from the BreakHis database. ResNet V1 152 classified benign and malignant breast cancers with an accuracy of 98.7%. In addition, ResNet V1 50 and ResNet V1 152 categorized either benign-(adenosis, fibroadenoma, phyllodes tumor and tubular adenoma) or malignant- (ductal carcinoma, lobular carcinoma, mucinous carcinoma, and papillary carcinoma) sub-types with 94.8% and 96.4% accuracy, respectively. The confusion matrices revealed high sensitivity values of 1, 0.995 and 0.993 for cancer types, as well as malignant-and benign sub-types respectively. The areas under the curve (AUC) scores were 0.996, 0.973 and 0.996 for cancer types, malignant and benign sub-types, respectively. One of the most significant and striking result to emerge from the data analysis is negligible false positive (FP) and false negative (FN). The optimum results, as shown in Tables (III, IV, V, VI), indicate that FP is between 0 and 4 while FN is between 0 and 8 in which test data including 800, 900, 809, 1000 for given four classes (Table I).
机译:在女性中,乳腺癌仍然是最常见的癌症类型,也是导致癌症死亡的主要原因,每年诊断出240万新病例,死亡523,000。从历史上看,最初是通过临床筛查然后进行组织病理学分析来进行诊断。使用组织病理学图像对癌症进行自动分类是准确检测肿瘤亚型的一项艰巨任务。机器学习方法可以促进此过程,与传统方法相比,机器学习方法可能更可靠,更经济。为了证明这一原理,我们应用了经过微调的预训练深层神经网络,并首先尝试区分不同类型的癌症。使用6,402个组织微阵列(TMA)样本,包括ResNet V1 50预训练模型的模型正确预测了包括乳腺癌,膀胱癌,肺癌和淋巴瘤在内的四种癌症类型的99.8%。然后,为了对乳腺癌亚型进行分类,该方法已应用于BreakHis数据库中的82例患者的7,909张图像。 ResNet V1 152对良性和恶性乳腺癌进行了分类,准确性为98.7%。此外,ResNet V1 50和ResNet V1 152分别分为良性(腺瘤,纤维腺瘤,叶状腺瘤和肾小管腺瘤)或恶性(导管癌,小叶癌,粘液癌和乳头状癌)亚型,分别为94.8%和96.4准确度分别为%。混淆矩阵显示出对癌症类型以及恶性和良性亚型的敏感度值分别为1、0.995和0.993。对于癌症类型,恶性和良性亚型,曲线下面积(AUC)得分分别为0.996、0.993和0.996。从数据分析中得出的最重要,最显着的结果之一是假阳性(FP)和假阴性(FN)可以忽略不计。如表(III,IV,V,VI)所示,最佳结果表明FP在0和4之间,而FN在0和8之间,其中给定的四个类别的测试数据包括800、900、809、1000(表I)。

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