Radiomics model to classify mammary masses using breast DCE-MRI compared to the BI-RADS classification performance

被引:13
|
作者
Debbi, Kawtar [1 ]
Habert, Paul [2 ,3 ,4 ]
Grob, Anais [1 ]
Loundou, Anderson [5 ,6 ]
Siles, Pascale [1 ]
Bartoli, Axel [1 ,7 ]
Jacquier, Alexis [1 ,7 ]
机构
[1] Timone Hop, Serv Radiol, 264 Rue St Pierre, F-13005 Marseille, France
[2] Hop Nord Marseille, Serv Radiol, Chemin Bourrely, F-13015 Marseille, France
[3] Aix Marseille Univ, LIIE, Marseille, France
[4] Aix Marseille Univ, CERIMED, Marseille, France
[5] Aix Marseille Univ, Hlth Serv Res & Qual Life Ctr, CEReSS, UR3279, Marseille, France
[6] AP HM, Dept Publ Hlth, Marseille, France
[7] Aix Marseille Univ, AP HM, CRMBM CEMEREM Ctr Resonance Magnet Biol & Med, CNRS,Ctr Explorat Metab Resonance Magnet,UMR 7339, F-13385 Marseille, France
关键词
Breast neoplasms; Magnetic resonance imaging; Radiomics; Artificial intelligence; IMAGING TEXTURE ANALYSIS; ABBREVIATED PROTOCOL;
D O I
10.1186/s13244-023-01404-x
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
BackgroundRecent advanced in radiomics analysis could help to identify breast cancer among benign mammary masses. The aim was to create a radiomics signature using breast DCE-MRI extracted features to classify tumors and to compare the performances with the BI-RADS classification.Material and methodsFrom September 2017 to December 2019 images, exams and records from consecutive patients with mammary masses on breast DCE-MRI and available histology from one center were retrospectively reviewed (79 patients, 97 masses). Exclusion criterion was malignant uncertainty. The tumors were split in a train-set (70%) and a test-set (30%). From 14 kinetics maps, 89 radiomics features were extracted, for a total of 1246 features per tumor. Feature selection was made using Boruta algorithm, to train a random forest algorithm on the train-set. BI-RADS classification was recorded from two radiologists.ResultsSeventy-seven patients were analyzed with 94 tumors, (71 malignant, 23 benign). Over 1246 features, 17 were selected from eight kinetic maps. On the test-set, the model reaches an AUC = 0.94 95 CI [0.85-1.00] and a specificity of 33% 95 CI [10-70]. There were 43/94 (46%) lesions BI-RADS4 (4a = 12/94 (13%); 4b = 9/94 (10%); and 4c = 22/94 (23%)). The BI-RADS score reached an AUC = 0.84 95 CI [0.73-0.95] and a specificity of 17% 95 CI [3-56]. There was no significant difference between the ROC curves for the model or the BI-RADS score (p = 0.19).ConclusionA radiomics signature from features extracted using breast DCE-MRI can reach an AUC of 0.94 on a test-set and could provide as good results as BI-RADS to classify mammary masses.
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页数:9
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