Comparison between coronal FLASH and sagittal double echo steady state MRI in detecting longitudinal cartilage thickness change by fully automated segmentation - Data from the FNIH biomarker cohort.

IF 2.8
Osteoarthritis and cartilage open Pub Date : 2025-08-05 eCollection Date: 2025-09-01 DOI:10.1016/j.ocarto.2025.100657
Felix Eckstein, Akshay S Chaudhari, David J Hunter, Wolfgang Wirth
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引用次数: 0

Abstract

Objective: Artificial intelligence (AI-) based automated cartilage analysis demonstrated similar sensitivity to change and only slighty inferior differentiation between radiographic progressors and non-progressors compared with manual segmentation. However, this finding was based on DESS MRI from the Osteoarthritis Initiative (OAI), whereas the vast majority of multicenter clinical trials rely on T1-weighted gradient echo (e.g. FLASH). Here we directly compare fully automated analysis of coronal FLASH vs. sagittal DESS, and vs. manually segmented DESS, in a sample with both FLASH and DESS MRI acquisitions.

Design: Convolutional neural network (CNN) algorithms were trained on 86 radiographically osteoarthritic knees with manual expert segmentation of the medial and lateral femorotibial cartilages (coronal FLASH and sagittal DESS). Post-processing involved automated registration of CNN-based subchondral bone segmentation to reference areas. The models were applied to baseline and two-year follow-up MRIs of radiographic progressor and non-progressor knees in the Foundation of the NIH Biomarker sample of the OAI.

Results: Of the 322 FNIH knees with both FLASH and DESS; 157 were radiographic progressors. Sensitivity to medial femorotibial cartilage thickness change (standardized response mean) in the progressor subcohort was -0.81 for FLASH (automated analysis), -0.74 for automatically, and -0.72 for manually segmented DESS. Differentiation from non-progressors (Cohen's D) was -0.82. -0.70, and -0.87, respectively.

Conclusions: Fully automated, AI-based cartilage segmentation with advanced post-processing reveals that coronal FLASH is at least as discriminative between radiographic progressor vs. non-progressor knees as sagittal DESS MRI. Yet, performance of fully automated segmentation is slightly inferior to manual analysis with expert quality control.

Trial id: Clinicaltrials.gov identification: NCT00080171.

冠状面FLASH和矢状面双回声稳态MRI在全自动分割检测纵向软骨厚度变化中的比较——来自FNIH生物标志物队列的数据。
目的:与人工分割相比,基于人工智能(AI-)的自动软骨分析对变化具有相似的敏感性,在x线摄影进展者和非进展者之间的区分仅略差。然而,这一发现是基于骨关节炎倡议(OAI)的DESS MRI,而绝大多数多中心临床试验依赖于t1加权梯度回波(如FLASH)。在这里,我们直接比较了冠状面FLASH与矢状面DESS的全自动分析,以及与手动分割的DESS,在一个样本中使用FLASH和DESS MRI采集。设计:卷积神经网络(CNN)算法通过人工专家分割股胫骨内侧和外侧软骨(冠状面FLASH和矢状面DESS)对86个骨性关节炎膝关节进行影像学训练。后处理涉及基于cnn的软骨下骨分割到参考区域的自动配准。这些模型被应用于基线和两年随访核磁共振成像的进展和非进展膝关节在美国国立卫生研究院生物标志物样本的基础上。结果:322例伴有FLASH和DESS的FNIH膝关节;157例为放射照相进展者。在进展亚队列中,FLASH(自动分析)对股胫内侧软骨厚度变化的敏感性(标准化反应平均值)为-0.81,自动分析为-0.74,手动分割DESS为-0.72。与非进展者的分化(Cohen’s D)为-0.82。-0.70和-0.87。结论:全自动、基于人工智能的软骨分割和先进的后处理显示,冠状面FLASH至少与矢状面DESS MRI一样可以区分放射学上的进展与非进展膝关节。然而,全自动分割的性能略低于有专家质量控制的人工分析。试验编号:Clinicaltrials.gov鉴定号:NCT00080171。
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来源期刊
Osteoarthritis and cartilage open
Osteoarthritis and cartilage open Orthopedics, Sports Medicine and Rehabilitation
CiteScore
3.30
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