放射组学和机器学习比肌肉骨骼放射学家更能区分软组织脂肪瘤和脂肪肉瘤。

Q2 Medicine
Sarcoma Pub Date : 2020-01-07 eCollection Date: 2020-01-01 DOI:10.1155/2020/7163453
Ieva Malinauskaite, Jeremy Hofmeister, Simon Burgermeister, Angeliki Neroladaki, Marion Hamard, Xavier Montet, Sana Boudabbous
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引用次数: 31

摘要

在常规的MRI检查中区分脂肪瘤和脂肪肉瘤是具有挑战性的。在MRI诊断不确定的情况下,通常需要进一步的侵入性手术(经皮活检或手术)来根据组织病理学检查进行诊断。放射组学和机器学习允许自动和可靠地区分放射图像上遇到的几种类型的病理。该研究的目的是评估放射组学和机器学习在术前MRI区分软组织脂肪瘤和脂肪肉瘤方面的贡献,并评估机器学习模型与肌肉骨骼放射科医生相比的诊断准确性。从38例软组织肿瘤(24例脂肪瘤,14例脂肪肉瘤,基于组织病理学诊断)的t1加权自旋回波1.5和3.0特斯拉MRI感兴趣体积中回顾性提取86个放射组学特征。然后使用这些放射组学特征来训练机器学习分类器来区分脂肪瘤和脂肪肉瘤。使用蒙特卡罗交叉验证和接收者工作特征曲线分析(ROC-AUC)评估机器学习模型的泛化性能。最后,将机器学习模型的性能与三位专业肌肉骨骼放射科医生使用McNemar测试的准确性进行比较。机器学习分类器准确区分了脂肪瘤和脂肪肉瘤,ROC-AUC为0.926。值得注意的是,它的表现优于三位专门的肌肉骨骼放射科医生,他们的ROC-AUC分别为0.685、0.805和0.785。尽管在少数病例上得到了发展,但经过训练的机器学习分类器在术前MRI上准确地区分了脂肪瘤和脂肪肉瘤,比专业肌肉骨骼放射科医生的表现更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Radiomics and Machine Learning Differentiate Soft-Tissue Lipoma and Liposarcoma Better than Musculoskeletal Radiologists.

Radiomics and Machine Learning Differentiate Soft-Tissue Lipoma and Liposarcoma Better than Musculoskeletal Radiologists.

Radiomics and Machine Learning Differentiate Soft-Tissue Lipoma and Liposarcoma Better than Musculoskeletal Radiologists.

Radiomics and Machine Learning Differentiate Soft-Tissue Lipoma and Liposarcoma Better than Musculoskeletal Radiologists.

Distinguishing lipoma from liposarcoma is challenging on conventional MRI examination. In case of uncertain diagnosis following MRI, further invasive procedure (percutaneous biopsy or surgery) is often required to allow for diagnosis based on histopathological examination. Radiomics and machine learning allow for several types of pathologies encountered on radiological images to be automatically and reliably distinguished. The aim of the study was to assess the contribution of radiomics and machine learning in the differentiation between soft-tissue lipoma and liposarcoma on preoperative MRI and to assess the diagnostic accuracy of a machine-learning model compared to musculoskeletal radiologists. 86 radiomics features were retrospectively extracted from volume-of-interest on T1-weighted spin-echo 1.5 and 3.0 Tesla MRI of 38 soft-tissue tumors (24 lipomas and 14 liposarcomas, based on histopathological diagnosis). These radiomics features were then used to train a machine-learning classifier to distinguish lipoma and liposarcoma. The generalization performance of the machine-learning model was assessed using Monte-Carlo cross-validation and receiver operating characteristic curve analysis (ROC-AUC). Finally, the performance of the machine-learning model was compared to the accuracy of three specialized musculoskeletal radiologists using the McNemar test. Machine-learning classifier accurately distinguished lipoma and liposarcoma, with a ROC-AUC of 0.926. Notably, it performed better than the three specialized musculoskeletal radiologists reviewing the same patients, who achieved ROC-AUC of 0.685, 0.805, and 0.785. Despite being developed on few cases, the trained machine-learning classifier accurately distinguishes lipoma and liposarcoma on preoperative MRI, with better performance than specialized musculoskeletal radiologists.

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来源期刊
Sarcoma
Sarcoma Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.00
自引率
0.00%
发文量
15
审稿时长
14 weeks
期刊介绍: Sarcoma is dedicated to publishing papers covering all aspects of connective tissue oncology research. It brings together work from scientists and clinicians carrying out a broad range of research in this field, including the basic sciences, molecular biology and pathology and the clinical sciences of epidemiology, surgery, radiotherapy and chemotherapy. High-quality papers concerning the entire range of bone and soft tissue sarcomas in both adults and children, including Kaposi"s sarcoma, are published as well as preclinical and animal studies. This journal provides a central forum for the description of advances in diagnosis, assessment and treatment of this rarely seen, but often mismanaged, group of patients.
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