利用磁共振成像对股骨头肿瘤进行分类和诊断的增强型基于 AlexNet 的模型

IF 3.4 2区 医学 Q2 Medicine Journal of Bone Oncology Pub Date : 2024-08-03 DOI:10.1016/j.jbo.2024.100626
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引用次数: 0

摘要

目的骨肿瘤以其发生率低和成像特征多样而著称,需要精确区分为良性和恶性。现有的诊断方法在很大程度上依赖于费力且多变的人工划定肿瘤区域。深度学习方法,尤其是卷积神经网络(CNN),已成为解决这些问题的一种有前途的解决方案。本文介绍了一种基于 AlexNet 的增强型深度学习模型,用于对股骨头肿瘤进行准确分类。方法本研究涉及 2020 年 7 月至 2023 年 1 月期间的 500 例股骨头肿瘤患者,共 500 例影像病例(良性 335 例,恶性 165 例)。采用 CNN 进行自动分类。模型框架包括训练和测试阶段,共有 8 层(5 个 Conv 层和 3 个 FC 层)和 ReLU 激活。基本的架构修改包括在第一和第二个卷积滤波器之后进行批量归一化(BN)。为了评估该算法在肿瘤分期方面的性能,我们与现有的各种方法进行了对比实验。评估指标包括准确度、精确度、灵敏度、特异性、F-measure、ROC 曲线和 AUC 值。结果对精确度、灵敏度、特异性和 F1 分数的分析表明,本文介绍的方法具有多种优势,包括特征维度低和强大的泛化能力(准确度为 98.34%,灵敏度为 97.26%,特异性为 95.74%,F1 分数为 96.37)。这些发现凸显了其卓越的整体检测能力。值得注意的是,在比较各种算法时,它们通常表现出相似的分类性能。本研究提出了一种基于卷积神经网络对股骨头肿瘤图像进行分类的优化 AlexNet 模型。与其他方法相比,该算法具有更高的准确度、精确度、灵敏度、特异性和 F1 分数。此外,AUC 值进一步证实了该算法在灵敏度和特异性方面的突出表现。这项研究为医学图像分类领域做出了重大贡献,提供了一种高效的自动分类解决方案,并有望推动人工智能在骨肿瘤分类中的应用。
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An enhanced AlexNet-Based model for femoral bone tumor classification and diagnosis using magnetic resonance imaging

Objective

Bone tumors, known for their infrequent occurrence and diverse imaging characteristics, require precise differentiation into benign and malignant categories. Existing diagnostic approaches heavily depend on the laborious and variable manual delineation of tumor regions. Deep learning methods, particularly convolutional neural networks (CNNs), have emerged as a promising solution to tackle these issues. This paper introduces an enhanced deep-learning model based on AlexNet to classify femoral bone tumors accurately.

Methods

This study involved 500 femoral tumor patients from July 2020 to January 2023, with 500 imaging cases (335 benign and 165 malignant). A CNN was employed for automated classification. The model framework encompassed training and testing stages, with 8 layers (5 Conv and 3 FC) and ReLU activation. Essential architectural modifications included Batch Normalization (BN) after the first and second convolutional filters. Comparative experiments with various existing methods were conducted to assess algorithm performance in tumor staging. Evaluation metrics encompassed accuracy, precision, sensitivity, specificity, F-measure, ROC curves, and AUC values.

Results

The analysis of precision, sensitivity, specificity, and F1 score from the results demonstrates that the method introduced in this paper offers several advantages, including a low feature dimension and robust generalization (with an accuracy of 98.34 %, sensitivity of 97.26 %, specificity of 95.74 %, and an F1 score of 96.37). These findings underscore its exceptional overall detection capabilities. Notably, when comparing various algorithms, they generally exhibit similar classification performance. However, the algorithm presented in this paper stands out with a higher AUC value (AUC=0.848), signifying enhanced sensitivity and more robust specificity.

Conclusion

This study presents an optimized AlexNet model for classifying femoral bone tumor images based on convolutional neural networks. This algorithm demonstrates higher accuracy, precision, sensitivity, specificity, and F1-score than other methods. Furthermore, the AUC value further confirms the outstanding performance of this algorithm in terms of sensitivity and specificity. This research makes a significant contribution to the field of medical image classification, offering an efficient automated classification solution, and holds the potential to advance the application of artificial intelligence in bone tumor classification.

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来源期刊
CiteScore
7.20
自引率
2.90%
发文量
50
审稿时长
34 days
期刊介绍: The Journal of Bone Oncology is a peer-reviewed international journal aimed at presenting basic, translational and clinical high-quality research related to bone and cancer. As the first journal dedicated to cancer induced bone diseases, JBO welcomes original research articles, review articles, editorials and opinion pieces. Case reports will only be considered in exceptional circumstances and only when accompanied by a comprehensive review of the subject. The areas covered by the journal include: Bone metastases (pathophysiology, epidemiology, diagnostics, clinical features, prevention, treatment) Preclinical models of metastasis Bone microenvironment in cancer (stem cell, bone cell and cancer interactions) Bone targeted therapy (pharmacology, therapeutic targets, drug development, clinical trials, side-effects, outcome research, health economics) Cancer treatment induced bone loss (epidemiology, pathophysiology, prevention and management) Bone imaging (clinical and animal, skeletal interventional radiology) Bone biomarkers (clinical and translational applications) Radiotherapy and radio-isotopes Skeletal complications Bone pain (mechanisms and management) Orthopaedic cancer surgery Primary bone tumours Clinical guidelines Multidisciplinary care Keywords: bisphosphonate, bone, breast cancer, cancer, CTIBL, denosumab, metastasis, myeloma, osteoblast, osteoclast, osteooncology, osteo-oncology, prostate cancer, skeleton, tumour.
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