基于 AO Spine-DGOU 骨质疏松性骨折分类系统的人工神经网络模型检测骨质疏松性椎体压缩性骨折 (OVCF)

Q3 Medicine
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引用次数: 0

摘要

背景骨质疏松性椎体压缩骨折(OVCF)会大大降低患者与健康相关的生活质量。计算机断层扫描(CT)是目前诊断 OVCF 的标准。本文旨在评估人工神经网络(ANN)的 OVCF 检测潜力。方法基于深度学习的人工智能模型有望快速自动识别和可视化 OVCF。本研究利用深度人工神经网络(ANN)对 OVCF 的检测、分类和分级进行了研究。技术:使用注释技术将 1,050 张有症状腰痛的 OVCF CT 图像的矢状面图像分离成 934 张 CT 图像作为训练数据集(89%),116 张 CT 图像作为测试数据集(11%)。放射科医生对训练数据集进行标记、清理和注释。使用 AO Spine-DGOU 骨质疏松性骨折分类系统对所有腰椎间盘进行评估。使用深度学习 ANN 模型对 OVCF 的检测和分级进行了训练。结果矢状腰椎 CT 训练数据集包括 OF1 的 5010 个 OVCF、OF2 的 1942 个 OVCF、OF3 的 522 个 OVCF、OF4 的 336 个 OVCF 和 OF5 的 0 个 OVCF。结论通过使用 AO Spine-DGOU 骨质疏松性骨折分类系统自动、一致地评估常规 CT 扫描,ANN 模型为腰椎 OVCF 的分类提供了一种快速、有效的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Osteoporotic vertebral compression fracture (OVCF) detection using artificial neural networks model based on the AO spine-DGOU osteoporotic fracture classification system

Background

Osteoporotic Vertebral Compression Fracture (OVCF) substantially reduces a person's health-related quality of life. Computer Tomography (CT) scan is currently the standard for diagnosis of OVCF. The aim of this paper was to evaluate the OVCF detection potential of artificial neural networks (ANN).

Methods

Models of artificial intelligence based on deep learning hold promise for quickly and automatically identifying and visualizing OVCF. This study investigated the detection, classification, and grading of OVCF using deep artificial neural networks (ANN). Techniques: Annotation techniques were used to segregate the sagittal images of 1,050 OVCF CT pictures with symptomatic low back pain into 934 CT images for a training dataset (89%) and 116 CT images for a test dataset (11%). A radiologist tagged, cleaned, and annotated the training dataset. Disc deterioration was assessed in all lumbar discs using the AO Spine-DGOU Osteoporotic Fracture Classification System. The detection and grading of OVCF were trained using the deep learning ANN model. By putting an automatic model to the test for dataset grading, the outcomes of the ANN model training were confirmed.

Results

The sagittal lumbar CT training dataset included 5,010 OVCF from OF1, 1942 from OF2, 522 from OF3, 336 from OF4, and none from OF5. With overall 96.04% accuracy, the deep ANN model was able to identify and categorize lumbar OVCF.

Conclusions

The ANN model offers a rapid and effective way to classify lumbar OVCF by automatically and consistently evaluating routine CT scans using AO Spine-DGOU osteoporotic fracture classification system.

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来源期刊
CiteScore
1.80
自引率
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发文量
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审稿时长
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