MRI与数字医学诊断:将深度学习融入腰椎退行性疾病的临床决策。

IF 1.6 4区 医学 Q2 SURGERY
Frontiers in Surgery Pub Date : 2025-01-06 eCollection Date: 2024-01-01 DOI:10.3389/fsurg.2024.1424716
Baoyi Ke, Wenyu Ma, Junbo Xuan, Yinghao Liang, Liguang Zhou, Wenyong Jiang, Jing Lin, Guixiang Li
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引用次数: 0

摘要

简介:利用深度学习工具开发基于人工智能(AI)深度学习算法的智能系统,旨在通过识别腰椎磁共振图像(MRI)来辅助腰椎退行性疾病的诊断,提高医生的临床效率。方法:采用深度学习技术PP-YOLOv2算法,设计基于腰椎MR图像自动识别腰椎疾病(腰椎间盘突出或腰椎滑脱)的深度学习程序。回顾性分析2017年1月至2022年1月来我院就诊的患者腰椎MR图像。将采集到的图像分为训练集和测试集。使用训练集图像来建立和验证深度学习程序的算法。对测试集图像进行注释,并由三名脊柱专家记录实验结果。使用深度学习程序对训练集图像进行验证,并记录实验结果。最后,比较深度学习算法与脊柱外科医生的准确性,以确定基于PP-YOLOv2算法的深度学习技术的临床可用性。最终共纳入654例患者,其中604例为训练集,50例为测试集。结果:基于PP-YOLOv2算法的深度学习算法的平均精度(mAP)值达到90.08%。通过对测试集的分类,与人工识别相比,深度学习算法在诊断腰椎MR图像方面表现出更高的灵敏度、特异性和准确性。深度学习程序的检测时间明显短于人工识别,差异有统计学意义(P < 0.05)。结论:基于PP-YOLOv2算法的深度学习技术可以从腰椎MRI图像中识别正常椎间盘、腰椎间盘突出和腰椎滑脱。其诊断性能明显高于大多数脊柱外科医生,可实际应用于临床环境。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MRI to digital medicine diagnosis: integrating deep learning into clinical decision-making for lumbar degenerative diseases.

Introduction: To develop an intelligent system based on artificial intelligence (AI) deep learning algorithms using deep learning tools, aiming to assist in the diagnosis of lumbar degenerative diseases by identifying lumbar spine magnetic resonance images (MRI) and improve the clinical efficiency of physicians.

Methods: The PP-YOLOv2 algorithm, a deep learning technique, was used to design a deep learning program capable of automatically identifying the spinal diseases (lumbar disc herniation or lumbar spondylolisthesis) based on the lumbar spine MR images. A retrospective analysis was conducted on lumbar spine MR images of patients who visited our hospital from January 2017 to January 2022. The collected images were divided into a training set and a testing set. The training set images were used to establish and validate the deep learning program's algorithm. The testing set images were annotated, and the experimental results were recorded by three spinal specialists. The training set images were also validated using the deep learning program, and the experimental results were recorded. Finally, a comparison of the accuracy of the deep learning algorithm and that of spinal surgeons was performed to determine the clinical usability of deep learning technology based on the PP-YOLOv2 algorithm. A total of 654 patients were included in the final study, with 604 cases in the training set and 50 cases in the testing set.

Results: The mean average precision (mAP) value of the deep learning algorithm reached 90.08% based on the PP-YOLOv2 algorithm. Through classification of the testing set, the deep learning algorithm showed higher sensitivity, specificity, and accuracy in diagnosing lumbar spine MR images compared to manual identification. Additionally, the testing time of the deep learning program was significantly shorter than that of manual identification, and the differences were statistically significant (P < 0.05).

Conclusions: Deep learning technology based on the PP-YOLOv2 algorithm can be used to identify normal intervertebral discs, lumbar disc herniation, and lumbar spondylolisthesis from lumbar MRI images. Its diagnostic performance is significantly higher than that of most spinal surgeons and can be practically applied in clinical settings.

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来源期刊
Frontiers in Surgery
Frontiers in Surgery Medicine-Surgery
CiteScore
1.90
自引率
11.10%
发文量
1872
审稿时长
12 weeks
期刊介绍: Evidence of surgical interventions go back to prehistoric times. Since then, the field of surgery has developed into a complex array of specialties and procedures, particularly with the advent of microsurgery, lasers and minimally invasive techniques. The advanced skills now required from surgeons has led to ever increasing specialization, though these still share important fundamental principles. Frontiers in Surgery is the umbrella journal representing the publication interests of all surgical specialties. It is divided into several “Specialty Sections” listed below. All these sections have their own Specialty Chief Editor, Editorial Board and homepage, but all articles carry the citation Frontiers in Surgery. Frontiers in Surgery calls upon medical professionals and scientists from all surgical specialties to publish their experimental and clinical studies in this journal. By assembling all surgical specialties, which nonetheless retain their independence, under the common umbrella of Frontiers in Surgery, a powerful publication venue is created. Since there is often overlap and common ground between the different surgical specialties, assembly of all surgical disciplines into a single journal will foster a collaborative dialogue amongst the surgical community. This means that publications, which are also of interest to other surgical specialties, will reach a wider audience and have greater impact. The aim of this multidisciplinary journal is to create a discussion and knowledge platform of advances and research findings in surgical practice today to continuously improve clinical management of patients and foster innovation in this field.
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