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人工智能在骨关节炎中的应用:膝关节牵伸修复术与疼痛、影像学和免疫学结果的相关性。

Artificial intelligence in osteoarthritis: repair by knee joint distraction shows association of pain, radiographic and immunological outcomes.

机构信息

Department of Rheumatology and Clinical Immunology, University Medical Center Utrecht, Utrecht, The Netherlands.

ImageBiopsy Lab, Vienna, Austria.

出版信息

Rheumatology (Oxford). 2023 Aug 1;62(8):2789-2796. doi: 10.1093/rheumatology/keac723.

Abstract

OBJECTIVES

Knee joint distraction (KJD) has been associated with clinical and structural improvement and SF marker changes. The current objective was to analyse radiographic changes after KJD using an automatic artificial intelligence-based measurement method and relate these to clinical outcome and SF markers.

METHODS

Twenty knee osteoarthritis patients were treated with KJD in regular care. Radiographs and WOMAC were collected before and ∼1 year post-treatment. SF was aspirated before, during and after treatment; biomarker levels were assessed by immunoassay. Radiographs were analysed to obtain compartmental minimum and standardized joint space width (JSW), Kellgren-Lawrence (KL) grades, compartmental joint space narrowing (JSN) scores, and osteophytosis and sclerosis scores. Results were analysed for the most affected compartment (MAC) and least affected compartment. Radiographic changes were analysed using the Wilcoxon signed rank test for categorical and paired t-test for continuous variables. Linear regression was used to calculate associations between changes in JSW, WOMAC pain and SF markers.

RESULTS

Sixteen patients could be evaluated. JSW, KL and JSN improved in around half of the patients, significant only for MAC JSW (P < 0.05). MAC JSW change was positively associated with WOMAC pain change (P < 0.04). Greater monocyte chemoattractant protein 1 (MCP-1) and lower TGFβ-1 increases were significantly associated with changes in MAC JSW (P < 0.05). MCP-1 changes were positively associated with WOMAC pain changes (P < 0.05).

CONCLUSION

Automatic radiographic measurements show improved joint structure in most patients after KJD in regular care. MAC JSW increased significantly and was associated with SF biomarker level changes and even with improvements in pain as experienced by these patients.

摘要

目的

膝关节分离(KJD)与临床和结构改善以及 SF 标志物变化有关。本研究旨在使用基于自动人工智能的测量方法分析 KJD 后的影像学变化,并将这些变化与临床结果和 SF 标志物相关联。

方法

20 例膝关节骨关节炎患者在常规护理中接受 KJD 治疗。在治疗前和治疗后约 1 年收集 X 线片和 WOMAC。在治疗前、治疗中和治疗后抽吸 SF,并通过免疫测定评估生物标志物水平。分析 X 线片以获得房室最小和标准化关节间隙宽度(JSW)、Kellgren-Lawrence(KL)分级、房室关节间隙狭窄(JSN)评分以及骨赘和硬化评分。分析最受影响的房室(MAC)和最不受影响的房室。使用 Wilcoxon 符号秩检验对分类变量和配对 t 检验对连续变量进行分析。线性回归用于计算 JSW、WOMAC 疼痛和 SF 标志物变化之间的关联。

结果

16 例患者可进行评估。在大约一半的患者中,JSW、KL 和 JSN 得到改善,仅 MAC JSW 有统计学意义(P<0.05)。MAC JSW 变化与 WOMAC 疼痛变化呈正相关(P<0.04)。单核细胞趋化蛋白 1(MCP-1)增加较多和转化生长因子β-1(TGFβ-1)降低较多与 MAC JSW 变化显著相关(P<0.05)。MCP-1 变化与 WOMAC 疼痛变化呈正相关(P<0.05)。

结论

在常规护理中,KJD 后大多数患者的关节结构自动放射学测量显示得到改善。MAC JSW 显著增加,与 SF 生物标志物水平变化相关,甚至与患者疼痛改善相关。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3e6f/10393432/4ce54eb603d5/keac723f1.jpg

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