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人工智能聚类成人脊柱畸形矢状面形态可预测手术特点、对线和结果。

Artificial intelligence clustering of adult spinal deformity sagittal plane morphology predicts surgical characteristics, alignment, and outcomes.

机构信息

Department of Orthopaedic Surgery, Warren Alpert Medical School of Brown University, Alpert Medical School, Providence, Rhode Island, 1 Kettle Point Avenue, East Providence, RI, 02914, USA.

Hospital for Special Surgery, Newyork city, NY, USA.

出版信息

Eur Spine J. 2021 Aug;30(8):2157-2166. doi: 10.1007/s00586-021-06799-z. Epub 2021 Apr 15.

Abstract

PURPOSE

AI algorithms have shown promise in medical image analysis. Previous studies of ASD clusters have analyzed alignment metrics-this study sought to complement these efforts by analyzing images of sagittal anatomical spinopelvic landmarks. We hypothesized that an AI algorithm would cluster preoperative lateral radiographs into groups with distinct morphology.

METHODS

This was a retrospective review of a multicenter, prospectively collected database of adult spinal deformity. A total of 915 patients with adult spinal deformity and preoperative lateral radiographs were included. A 2 × 3, self-organizing map-a form of artificial neural network frequently employed in unsupervised classification tasks-was developed. The mean spine shape was plotted for each of the six clusters. Alignment, surgical characteristics, and outcomes were compared.

RESULTS

Qualitatively, clusters C and D exhibited only mild sagittal plane deformity. Clusters B, E, and F, however, exhibited marked positive sagittal balance and loss of lumbar lordosis. Cluster A had mixed characteristics, likely representing compensated deformity. Patients in clusters B, E, and F disproportionately underwent 3-CO. PJK and PJF were particularly prevalent among clusters A and E. Among clusters B and F, patients who experienced PJK had significantly greater positive sagittal balance than those who did not.

CONCLUSIONS

This study clustered preoperative lateral radiographs of ASD patients into groups with highly distinct overall spinal morphology and association with sagittal alignment parameters, baseline HRQOL, and surgical characteristics. The relationship between SVA and PJK differed by cluster. This study represents significant progress toward incorporation of computer vision into clinically relevant classification systems in adult spinal deformity.

LEVEL OF EVIDENCE IV

Diagnostic: individual cross-sectional studies with the consistently applied reference standard and blinding.

摘要

目的

人工智能算法在医学图像分析中显示出了潜力。以前对 ASD 聚类的研究分析了配准指标——本研究试图通过分析矢状解剖性脊柱骨盆标志的图像来补充这些工作。我们假设人工智能算法将能够将术前侧位 X 光片聚类为具有不同形态的组。

方法

这是一项对成人脊柱畸形多中心前瞻性收集数据库的回顾性研究。共纳入 915 例成人脊柱畸形和术前侧位 X 光片的患者。开发了一个 2×3 的自组织映射——一种常用于无监督分类任务的人工神经网络形式。为每个六个聚类绘制了平均脊柱形状。比较了对齐、手术特点和结果。

结果

定性地说,C 组和 D 组仅表现出轻度矢状面畸形。然而,B 组、E 组和 F 组表现出明显的正矢状平衡和腰椎前凸丢失。A 组具有混合特征,可能代表代偿性畸形。B 组、E 组和 F 组的患者不成比例地进行了 3-CO。PJK 和 PJF 在 A 组和 E 组中尤为常见。在 B 组和 F 组中,经历 PJK 的患者的正矢状平衡显著大于未经历 PJK 的患者。

结论

本研究将 ASD 患者的术前侧位 X 光片聚类为具有高度不同的整体脊柱形态和与矢状位对齐参数、基线 HRQOL 和手术特点相关的组。SVA 和 PJK 之间的关系因聚类而异。本研究代表了将计算机视觉纳入成人脊柱畸形中临床相关分类系统的重要进展。

证据水平 IV:诊断:具有一致应用参考标准和盲法的个体横断面研究。

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