A deep learning pipeline for automatized assessment of spinal MRI

Irina Balzer , Malin Mühlemann , Moritz Jokeit , Ishaan Singh Rawal , Jess G. Snedeker , Mazda Farshad , Jonas Widmer
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引用次数: 1

Abstract

Background

This work evaluates the feasibility, development, and validation of a machine learning pipeline that includes all tasks from MRI input to the segmentation and grading of the intervertebral discs in the lumbar spine, offering multiple different radiological gradings of degeneration as quantitative objective output.

Methods

The pipelines’ performance was analysed on 1′000 T2-weighted sagittal MRI. Binary outputs were assessed with the harmonic mean of precision and recall (DSC) and the area under the precision-recall curve (AUC-PR). Multi-class output scores were averaged and complemented by the Top-2 categorical accuracy. The processing success rate was evaluated on 10′053 unlabelled MRI scans of lumbar spines.

Results

The midsagittal plane selection achieved an DSC of 74,80% ± 2,99% and an AUC-PR score of 81.71% ± 2.72% (96.91% Top-2 categorical accuracy). The segmentation network obtained a DSC of 91.80% ± 0.44%. The Pfirrmann grading of intervertebral discs in the midsagittal plane was classified with a DSC of 64.08% ± 3.29% and an AUC-PR score of 68.25% ± 6.00% (91.65% Top-2 categorical accuracy). Disc herniations achieved a DSC of 61.57% ± 3.39% and an AUC-PR score of 66.86% ± 5.03%. The cranial endplate defects reached a DSC of 49.76% ± 3.45% and 52.36% ± 1.98% AUC-PR (slightly superior predictions of caudal endplate defect). The binary classifications for the caudal Schmorl's nodes obtained a DSC of 91.58% ± 2.25% with an AUC-PR metric of 96.69% ± 1.58% (similar performance for cranial Schmorl's nodes). Spondylolisthesis was classified with a DSC of 89.03% ± 2.42% and an AUC-PR score of 95.98% ± 1.82%. Annular Fissures were predicted with a DSC of 78.09% ± 7.21% and an AUC-PR score of 86.31% ± 7.45%. Intervertebral disc classifications in the parasagittal plane achieved an equivalent performance. The pipeline successfully processed 98.53% of the provided sagittal MRI scans.

Conclusions

The present deep learning framework has the potential to aid the quantitative evaluation of spinal MRI for an array of clinically established grading systems.

Abstract Image

用于脊柱MRI自动化评估的深度学习管道
本工作评估了机器学习管道的可行性、发展和验证,该管道包括从MRI输入到腰椎椎间盘分割和分级的所有任务,提供多种不同的退变放射分级作为定量客观输出。方法在1 000张t2加权矢状面MRI上对导管的表现进行分析。用精密度和召回率的谐波平均值(DSC)和精密度-召回率曲线下面积(AUC-PR)对二值输出进行评价。多类输出得分取平均值,并辅以Top-2的分类准确率。通过10 ' 053腰椎无标记MRI扫描评估处理成功率。结果中矢状面选择的DSC分别为74.80%±2.99%,AUC-PR评分为81.71%±2.72% (Top-2分类准确率为96.91%)。分割网络的DSC为91.80%±0.44%。中矢状面椎间盘Pfirrmann分级DSC为64.08%±3.29%,AUC-PR评分为68.25%±6.00% (Top-2分类准确率为91.65%)。椎间盘突出的DSC为61.57%±3.39%,AUC-PR评分为66.86%±5.03%。颅骨终板缺损的DSC为49.76%±3.45%,AUC-PR为52.36%±1.98%(对尾侧终板缺损的预测略优于前者)。尾部Schmorl's淋巴结的二元分类DSC为91.58%±2.25%,AUC-PR为96.69%±1.58%(颅Schmorl's淋巴结的表现相似)。DSC为89.03%±2.42%,AUC-PR评分为95.98%±1.82%。预测牙环裂的DSC为78.09%±7.21%,AUC-PR评分为86.31%±7.45%。副矢状面椎间盘分类达到了相同的效果。该管道成功处理了98.53%的矢状面MRI扫描。目前的深度学习框架有潜力为一系列临床建立的分级系统提供脊柱MRI的定量评估。
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来源期刊
CiteScore
5.90
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