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基于放射组学的机器学习模型对强直性脊柱炎髋关节受累表型的研究:一项初步研究。

Radiomics-based machine learning model to phenotype hip involvement in ankylosing spondylitis: a pilot study.

机构信息

Department of Rheumatology and Immunology, The First Medical Center, Chinese PLA General Hospital, Beijing, China.

Department of Radiology, The First Medical Center, Chinese PLA General Hospital, Beijing, China.

出版信息

Front Immunol. 2024 Aug 29;15:1413560. doi: 10.3389/fimmu.2024.1413560. eCollection 2024.

Abstract

OBJECTIVES

Hip involvement is an important reason of disability in patients with ankylosing spondylitis (AS). Unveiling the potential phenotype of hip involvement in AS remains an unmet need to understand its biological mechanisms and improve clinical decision-making. Radiomics, a promising quantitative image analysis method that had been successfully used to describe the phenotype of a wide variety of diseases, while it was less reported in AS. The objective of this study was to investigate the feasibility of radiomics-based approach to profile hip involvement in AS.

METHODS

A total of 167 patients with AS was included. Radiomic features were extracted from pelvis MRI after image preprocessing and feature engineering. Then, we performed unsupervised machine learning method to derive radiomics-based phenotypes. The validation and interpretation of derived phenotypes were conducted from the perspectives of clinical backgrounds and MRI characteristics. The association between derived phenotypes and radiographic outcomes was evaluated by multivariable analysis.

RESULTS

1321 robust radiomic features were extracted and four biologically distinct phenotypes were derived. According to patient clinical backgrounds, phenotype I (38, 22.8%) and II (34, 20.4%) were labelled as high-risk while phenotype III (24, 14.4%) and IV (71, 42.5%) were at low risk for hip involvement. Consistently, the high-risk phenotypes were associated with higher prevalence of MRI-detected lesion than the low-risk. Moreover, phenotype I had significant acute inflammation signs than phenotype II, while phenotype IV was enthesitis-predominant. Importantly, the derived phenotypes were highly predictive of radiographic outcomes of patients, as the high-risk phenotypes were 3 times more likely to have radiological hip lesion than the low-risk [27 (58.7%) vs 16 (28.6%); adjusted odds ratio (OR) 2.95 (95% CI 1.10, 7.92)].

CONCLUSION

We confirmed for the first time, the clinical actionability of profiling hip involvement in AS by radiomics method. Four distinct phenotypes of hip involvement in AS were identified and importantly, the high-risk phenotypes could predict structural damage of hip involvement in AS.

摘要

目的

髋关节受累是强直性脊柱炎(AS)患者致残的重要原因。揭示 AS 髋关节受累的潜在表型仍是了解其生物学机制和改善临床决策的未满足需求。放射组学是一种很有前途的定量图像分析方法,已成功用于描述多种疾病的表型,但在 AS 中报道较少。本研究旨在探讨基于放射组学的方法在 AS 髋关节受累中的应用。

方法

共纳入 167 例 AS 患者。对骨盆 MRI 图像进行预处理和特征工程后,提取放射组学特征。然后,我们采用无监督机器学习方法得出放射组学表型。从临床背景和 MRI 特征的角度对衍生表型进行验证和解释。通过多变量分析评估衍生表型与影像学结果之间的关系。

结果

提取了 1321 个稳健的放射组学特征,并得出了 4 种具有生物学意义的不同表型。根据患者的临床背景,表型 I(38 例,22.8%)和表型 II(34 例,20.4%)被标记为高危,而表型 III(24 例,14.4%)和表型 IV(71 例,42.5%)为低危。同样,高危表型与 MRI 检测到的病变发生率较高有关。此外,表型 I 比表型 II 有更明显的急性炎症迹象,而表型 IV 以附着点炎为主。重要的是,这些衍生表型对患者的影像学结果有很高的预测性,因为高危表型发生影像学髋关节病变的可能性是低危表型的 3 倍[27 例(58.7%)比 16 例(28.6%);调整后的优势比(OR)为 2.95(95%CI 1.10, 7.92)]。

结论

本研究首次通过放射组学方法证实了 AS 髋关节受累的临床可操作性。确定了 AS 髋关节受累的 4 种不同表型,重要的是,高危表型可预测 AS 髋关节受累的结构损伤。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/80c1/11390496/546996d658b6/fimmu-15-1413560-g001.jpg

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