利用深度网络对增生性和腺瘤息肉进行分类

Aditi Jain, S. Sinha, S. Mazumdar
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引用次数: 0

摘要

结直肠癌(CRC)是世界上第三大常见疾病。息肉是一种生长在结肠内壁的肿块,通常是良性的,有些可能随着时间的推移发展成恶性肿瘤,因此建议将其切除以防止患结肠直肠癌的风险。这种息肉的早期识别和特征对癌症的预防和治疗至关重要。事实证明,DCNNs在广泛的对象分类中是非常有效的。在这项研究中,我们实验评估和比较了ResNet50和EfficientNetB0模型在区分增生性和腺瘤息肉以及诊断它们方面的有效性。我们的研究结果表明,尖端的DCNN模型可以正确地描述息肉,其准确性相当于或高于医生的预测。因此,我们的发现可能对未来的息肉分类研究有价值。
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Hyperplastic and Adenoma polyp classification using Deep networks
Colorectal cancer (CRC) is the world’s third most frequent disease. Polyps which are growths that emerge as lumps on the colon lining are often benign, some may develop into malignant tumours over time, thus it is advisable to have them removed to prevent the risk of colorectal cancer. Early identification and characterization of the kind of polyp are crucial for cancer prevention and treatment. DCNNs have proved to be extremely effective in object categorization over a wide range of object categories. In this study, we experimentally evaluated and compared the effectiveness of the ResNet50 and EfficientNetB0 models in distinguishing Hyperplastic from Adenoma polyps and diagnosing them. Our findings show that cutting-edge DCNN models may correctly characterize the polyps with accuracy equivalent to or greater than that predicted by doctors. As a result, our findings might be valuable for future polyp categorization studies.
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