Liawrungrueang Wongthawat, Kim Pyeoungkee, Kotheeranurak Vit, Jitpakdee Khanathip, Sarasombath Peem
Department of Orthopaedics, School of Medicine, University of Phayao, Phayao 56000, Thailand.
Department of Computer Engineering, Silla University, Busan 46958, Republic of Korea.
Diagnostics (Basel). 2023 Feb 10;13(4):663. doi: 10.3390/diagnostics13040663.
Intervertebral disc degeneration (IDD) is a common cause of symptomatic axial low back pain. Magnetic resonance imaging (MRI) is currently the standard for the investigation and diagnosis of IDD. Deep learning artificial intelligence models represent a potential tool for rapidly and automatically detecting and visualizing IDD. This study investigated the use of deep convolutional neural networks (CNNs) for the detection, classification, and grading of IDD.
Sagittal images of 1000 IDD T2-weighted MRI images from 515 adult patients with symptomatic low back pain were separated into 800 MRI images using annotation techniques to create a training dataset (80%) and 200 MRI images to create a test dataset (20%). The training dataset was cleaned, labeled, and annotated by a radiologist. All lumbar discs were classified for disc degeneration based on the Pfirrmann grading system. The deep learning CNN model was used for training in detecting and grading IDD. The results of the training with the CNN model were verified by testing the grading of the dataset using an automatic model.
The training dataset of the sagittal intervertebral disc lumbar MRI images found 220 IDDs of grade I, 530 of grade II, 170 of grade III, 160 of grade IV, and 20 of grade V. The deep CNN model was able to detect and classify lumbar IDD with an accuracy of more than 95%.
The deep CNN model can reliably automatically grade routine T2-weighted MRIs using the Pfirrmann grading system, providing a quick and efficient method for lumbar IDD classification.
椎间盘退变(IDD)是有症状的轴向腰痛的常见原因。磁共振成像(MRI)是目前IDD检查和诊断的标准。深度学习人工智能模型是快速自动检测和可视化IDD的潜在工具。本研究调查了深度卷积神经网络(CNN)在IDD检测、分类和分级中的应用。
来自515例有症状的成年腰痛患者的1000张IDD T2加权MRI矢状位图像,采用标注技术将其分为800张MRI图像以创建训练数据集(80%)和200张MRI图像以创建测试数据集(20%)。训练数据集由放射科医生进行清理、标记和注释。所有腰椎间盘根据Pfirrmann分级系统进行椎间盘退变分类。使用深度学习CNN模型对IDD进行检测和分级训练。通过使用自动模型测试数据集的分级来验证CNN模型的训练结果。
腰椎间盘矢状位MRI图像的训练数据集中发现I级IDD 220例,II级530例,III级170例,IV级160例,V级20例。深度CNN模型能够以超过95%的准确率检测和分类腰椎IDD。
深度CNN模型能够使用Pfirrmann分级系统可靠地自动对常规T2加权MRI进行分级,为腰椎IDD分类提供了一种快速有效的方法。