小关节
磁共振成像
分级(工程)
面(心理学)
医学
腰椎
腰痛
椎间盘
变性(医学)
腰椎
可靠性(半导体)
放射科
外科
病理
心理学
工程类
物理
社会心理学
土木工程
替代医学
人格
五大性格特征
功率(物理)
量子力学
作者
Maryam Nikpasand,Jill M. Middendorf,Vincent A. Ella,Kristen E. Jones,Bryan Ladd,Takashi Takahashi,Victor H. Barocas,Arin M. Ellingson
出处
期刊:JOR spine
[Wiley]
日期:2024-07-15
卷期号:7 (3)
被引量:4
摘要
Degeneration of both intervertebral discs (IVDs) and facet joints in the lumbar spine has been associated with low back pain, but whether and how IVD/joint degeneration contributes to pain remains an open question. Joint degeneration can be identified by pairing T1 and T2 magnetic resonance imaging (MRI) with analysis techniques such as Pfirrmann grades (IVD degeneration) and Fujiwara scores (facet degeneration). However, these grades are subjective, prompting the need to develop an automated technique to enhance inter-rater reliability. This study introduces an automated convolutional neural network (CNN) technique trained on clinical MRI images of IVD and facet joints obtained from public-access Lumbar Spine MRI Dataset. The primary goal of the automated system is to classify health of lumbar discs and facet joints according to Pfirrmann and Fujiwara grading systems and to enhance inter-rater reliability associated with these grading systems.
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