Automatic grading of intervertebral disc degeneration in lumbar dog spines

IF 3.4 3区 医学 Q1 ORTHOPEDICS
JOR Spine Pub Date : 2024-04-17 DOI:10.1002/jsp2.1326
Frank Niemeyer, Fabio Galbusera, Martijn Beukers, René Jonas, Youping Tao, Marion Fusellier, Marianna A. Tryfonidou, Cornelia Neidlinger-Wilke, Annette Kienle, Hans-Joachim Wilke
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Abstract

Background

Intervertebral disc degeneration is frequent in dogs and can be associated with symptoms and functional impairments. The degree of disc degeneration can be assessed on T2-weighted MRI scans using the Pfirrmann classification scheme, which was developed for the human spine. However, it could also be used to quantify the effectiveness of disc regeneration therapies. We developed and tested a deep learning tool able to automatically score the degree of disc degeneration in dog spines, starting from an existing model designed to process images of human patients.

Methods

MRI midsagittal scans of 5991 lumbar discs of dog patients were collected and manually evaluated with the Pfirrmann scheme and a modified scheme with transitional grades. A deep learning model was trained to classify the disc images based on the two schemes and tested by comparing its performance with the model processing human images.

Results

The determination of the Pfirrmann grade showed sensitivities higher than 83% for all degeneration grades, except for grade 5, which is rare in dog spines, and high specificities. In comparison, the correspondent human model had slightly higher sensitivities, on average 90% versus 85% for the canine model. The modified scheme with the fractional grades did not show significant advantages with respect to the original Pfirrmann grades.

Conclusions

The novel tool was able to accurately and reliably score the severity of disc degeneration in dogs, although with a performance inferior than that of the human model. The tool has potential in the clinical management of disc degeneration in canine patients as well as in longitudinal studies evaluating regenerative therapies in dogs used as animal models of human disorders.

Abstract Image

腰犬脊柱椎间盘退变的自动分级
背景 狗的椎间盘经常发生退变,并可能伴有症状和功能障碍。椎间盘退变的程度可通过 T2 加权磁共振成像扫描进行评估,采用的是针对人类脊柱开发的 Pfirrmann 分类方案。不过,它也可用于量化椎间盘再生疗法的效果。我们开发并测试了一种深度学习工具,它能自动对狗脊椎的椎间盘退化程度进行评分,该工具的起点是一个专为处理人类患者图像而设计的现有模型。 方法 我们收集了 5991 名狗病患者腰椎间盘的 MRI 中矢状面扫描图像,并使用 Pfirrmann 方案和经过修改的带有过渡等级的方案进行人工评估。根据这两种方案训练了一个深度学习模型来对椎间盘图像进行分类,并将其性能与处理人类图像的模型进行了对比测试。 结果 Pfirrmann 等级的确定结果显示,除狗脊柱中罕见的 5 级外,所有退变等级的灵敏度均高于 83%,特异性也很高。相比之下,相应的人类模型的灵敏度略高,平均为 90%,而犬模型为 85%。与原始的 Pfirrmann 等级相比,修改后的分数等级方案并没有显示出明显的优势。 结论 新型工具能够准确可靠地对犬椎间盘退变的严重程度进行评分,但评分结果不如人类模型。该工具可用于犬类患者椎间盘退变的临床治疗,也可用于对作为人类疾病动物模型的犬类进行再生疗法评估的纵向研究。
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来源期刊
JOR Spine
JOR Spine ORTHOPEDICS-
CiteScore
6.40
自引率
18.90%
发文量
42
审稿时长
10 weeks
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