基于特征提取的骨癌检测机器学习方法

Punithavathi Krishnamoorthy, G. Madhurasree
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摘要

骨肉瘤是一种发生在骨骼中的癌症。虽然骨肉瘤可以发生在任何骨头上,但它通常发生在腿和胳膊等长骨上。因此,骨癌的早期检测和分类已成为治疗患者的关键。这项工作采用了基于小波的分割算法来检测骨癌。然后对分割后的骨癌成分进行进一步的分类处理。这项研究采用了增强卷积神经网络(ECNN)分类法来区分良性和恶性骨癌。收集多张照片,利用小波变换特征提取训练有素的分类器模型。灵敏度(97%)、特异度(97%)、精确度(98%)、准确度(97.5%)和 F1Score(97.5)是 ECNN 深度学习(DL)算法的性能指标。结果显示,ECNN 深度学习优于 SVM、ANN 和 RNN 等深度学习方法。因此,ECNN 深度学习技术可用于更准确地诊断骨癌。基于组织学图片,我们的增强型模型在检测骨肉瘤癌症方面处于领先地位。
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Feature Extraction Based Machine Learning Approach for Bone Cancer Detection
Osteosarcoma is a type of cancer that develops in the bones. Though it can happen in any bone, it commonly happens in long bones like the legs and arms. As a result, early detection and categorization of bone cancers have become critical for treating patients. A wavelet-based segmentation algorithm was utilized in this work to detect bone cancers. The segmented bone cancer components were then processed further for categorization. The enhanced convolutional neural network (ECNN) classification was employed in this investigation to differentiate between benign and malignant bone cancers. Collect multiple photos and use wavelet transform features to extract a trained classifier model. Sensitivity (97%), Specificity (97%), Precision (98%), Accuracy (97.5%), and F1Score (97.5) are the performance metrics for the ECNN deep learning (DL) algorithm. According to the results, ECNN deep learning beats deep learning methods, including SVM, ANN, and RNN. As a result, the ECNN deep learning technology can be used to diagnose bone cancer more accurately. Based on histology pictures, our enhanced model performs at the cutting edge of detecting osteosarcoma cancer.
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