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脊柱骨肿瘤的影像学成像与诊断:用于肿瘤恶性程度分类的AlexNet和ResNet

Radiographic imaging and diagnosis of spinal bone tumors: AlexNet and ResNet for the classification of tumor malignancy.

作者信息

Guo Chengquan, Chen Yan, Li Jianjun

机构信息

Department of Orthopedic Surgery, Shengjing Hospital of China Medical University, Shenyang, Liaoning 110000 China.

出版信息

J Bone Oncol. 2024 Aug 18;48:100629. doi: 10.1016/j.jbo.2024.100629. eCollection 2024 Oct.

Abstract

OBJECTIVE

This study aims to explore the application of radiographic imaging and image recognition algorithms, particularly AlexNet and ResNet, in classifying malignancies for spinal bone tumors.

METHODS

We selected a cohort of 580 patients diagnosed with primary spinal osseous tumors who underwent treatment at our hospital between January 2016 and December 2023, whereby 1532 images (679 images of benign tumors, 853 images of malignant tumors) were extracted from this imaging dataset. Training and validation follow a ratio of 2:1. All patients underwent X-ray examinations as part of their diagnostic workup. This study employed convolutional neural networks (CNNs) to categorize spinal bone tumor images according to their malignancy. AlexNet and ResNet models were employed for this classification task. These models were fine-tuned through training, which involved the utilization of a database of bone tumor images representing different categories.

RESULTS

Through rigorous experimentation, the performance of AlexNet and ResNet in classifying spinal bone tumor malignancy was extensively evaluated. The models were subjected to an extensive dataset of bone tumor images, and the following results were observed. AlexNet: This model exhibited commendable efficiency during training, with each epoch taking an average of 3 s. Its classification accuracy was found to be approximately 95.6 %. ResNet: The ResNet model showed remarkable accuracy in image classification. After an extended training period, it achieved a striking 96.2 % accuracy rate, signifying its proficiency in distinguishing the malignancy of spinal bone tumors. However, these results illustrate the clear advantage of AlexNet in terms of proficiency despite a lower classification accuracy. The robust performance of the ResNet model is auspicious when accuracy is more favored in the context of diagnosing spinal bone tumor malignancy, albeit at the cost of longer training times, with each epoch taking an average of 32 s.

CONCLUSION

Integrating deep learning and CNN-based image recognition technology offers a promising solution for qualitatively classifying bone tumors. This research underscores the potential of these models in enhancing the diagnosis and treatment processes for patients, benefiting both patients and medical professionals alike. The study highlights the significance of selecting appropriate models, such as ResNet, to improve accuracy in image recognition tasks.

摘要

目的

本研究旨在探讨放射成像和图像识别算法,特别是AlexNet和ResNet,在脊柱骨肿瘤恶性肿瘤分类中的应用。

方法

我们选取了2016年1月至2023年12月期间在我院接受治疗的580例诊断为原发性脊柱骨肿瘤的患者队列,从该成像数据集中提取了1532张图像(良性肿瘤679张图像,恶性肿瘤853张图像)。训练和验证按照2:1的比例进行。所有患者均接受X线检查作为诊断检查的一部分。本研究采用卷积神经网络(CNN)根据脊柱骨肿瘤图像的恶性程度进行分类。使用AlexNet和ResNet模型进行此分类任务。这些模型通过训练进行微调,训练过程中使用了代表不同类别的骨肿瘤图像数据库。

结果

通过严格的实验,对AlexNet和ResNet在脊柱骨肿瘤恶性肿瘤分类中的性能进行了广泛评估。这些模型在大量骨肿瘤图像数据集上进行测试,观察到以下结果。AlexNet:该模型在训练过程中表现出令人称赞的效率,每个epoch平均耗时3秒。其分类准确率约为95.6%。ResNet:ResNet模型在图像分类中显示出显著的准确性。经过较长的训练期后,它达到了惊人的96.2%的准确率,表明其在区分脊柱骨肿瘤恶性程度方面的能力。然而,这些结果表明,尽管AlexNet的分类准确率较低,但其在效率方面具有明显优势。在诊断脊柱骨肿瘤恶性程度时,当更注重准确率时,ResNet模型的稳健性能是有利的,尽管其代价是训练时间更长,每个epoch平均耗时32秒。

结论

将深度学习和基于CNN的图像识别技术相结合,为骨肿瘤的定性分类提供了一个有前景的解决方案。本研究强调了这些模型在改善患者诊断和治疗过程中的潜力,使患者和医疗专业人员都受益。该研究突出了选择合适模型(如ResNet)以提高图像识别任务准确率的重要性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b84c/11381891/410804822b64/gr1.jpg

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