基于深度学习的肺癌分类和疾病严重程度评分预测

Rajkumar Maharaju, R. Valupadasu
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摘要

世界卫生组织(WHO)最近的统计数据显示,癌症是一种危及生命的疾病,每年在全球造成1000万人死亡。肺癌是全球死亡的主要原因,2020年有近221万人死于肺癌。肺癌日益增加,因此早期发现非常必要,以便开始适当的治疗,以挽救癌症患者的生命。随着图像处理和深度学习技术的发展,肺癌的早期检测变得非常重要和容易。提出的工作使用组织病理学图像(活检的显微检查)来分类不同的癌症类别。本文介绍了使用自适应微调的EfficientNetB7架构对三种类型(2种癌症类型腺癌、鳞状细胞癌和1种正常即良性)进行分类。分类结果使医生能够发现良性或恶性的类别,从而开始适当的治疗。在这项工作中,测量了诸如召回率,Fl-Score,精度和分类准确性等性能。与现有工作相比,本文提出的工作将分类准确率从97.5%提高到99.5%。随后,根据图像中出现的病变细胞的数量,将疾病严重程度分为四个级别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lung Cancer Classification and Prediction of Disease Severity Score Using Deep Learning
The World Health organization (WHO) recent statistics show that Cancer is a life-threatening disease that causes 10 million deaths every year around the globe. Lung Cancer is a leading cause of death worldwide, accounting for nearly 2.21 million deaths in 2020. Lung cancer is increasing day by day so early detection is much needed to initiate proper treatment to save the life of cancer patients. Lung cancer detection at an early stage has become very important and easy with image processing and deep learning techniques. The proposed work uses histopathological images (microscopic examination of a biopsy) to classify different cancer categories. This paper presents the use of Adaptive fine-tuned EfficientNetB7 architecture to classify three categories (2-cancer types Adenocarcinoma, Squamous cell carcinoma, and 1-normal i.e benign). The classification results enable the doctors to detect benign or malignant categories to initiate proper treatment. In this work measured performance ma such as Recall, Fl-Score, Precision, and classification accuracy. The proposed work enhanced the classification accuracy from 97.5% to 99.5% compared to the existing work. Later predicted the disease severity score in four levels based on the number of diseased cells present in the image.
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