A Machine Learning Ensemble Based on Radiomics to Predict BI-RADS Category and Reduce the Biopsy Rate of Ultrasound-Detected Suspicious Breast Masses

被引:14
|
作者
Interlenghi, Matteo [1 ]
Salvatore, Christian [1 ,2 ]
Magni, Veronica [3 ]
Caldara, Gabriele [2 ]
Schiavon, Elia [1 ]
Cozzi, Andrea [3 ]
Schiaffino, Simone [4 ]
Carbonaro, Luca Alessandro [5 ,6 ]
Castiglioni, Isabella [7 ,8 ]
Sardanelli, Francesco [3 ,4 ]
机构
[1] DeepTrace Technol S R L, Via Conservatorio 17, I-20122 Milan, Italy
[2] Ist Univ Super, Dept Sci Technol & Soc, Scuola Univ IUSS, Piazza Vittoria 15, I-27100 Pavia, Italy
[3] Univ Milan, Dept Biomed Sci Hlth, Via Luigi Mangiagalli 31, I-20133 Milan, Italy
[4] IRCCS Policlin San Donato, Unit Radiol, Via Rodolfo Morandi 30, I-20097 San Donato Milanese, Italy
[5] ASST Grande Osped Metropolitano Niguarda, Dept Radiol, Piazza dellOspedale Maggiore 3, I-20162 Milan, Italy
[6] Univ Milan, Dept Oncol & HematoOncol, Via Festa Perdono 7, I-20122 Milan, Italy
[7] CNR, Inst Biomed Imaging & Physiol, Via Fratelli Cervi 93, I-20090 Segrate, Italy
[8] Univ Milano Bicocca, Dept Phys, Piazza Sci 3, I-20126 Milan, Italy
基金
欧盟地平线“2020”;
关键词
breast cancer; ultrasound (US); core needle biopsy; machine learning; radiomics; sensitivity; positive predictive value; CORE NEEDLE-BIOPSY; CANCER; TRENDS; ULTRASONOGRAPHY; MAMMOGRAPHY; DIAGNOSES; DENSITY; WOMEN;
D O I
10.3390/diagnostics12010187
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
We developed a machine learning model based on radiomics to predict the BI-RADS category of ultrasound-detected suspicious breast lesions and support medical decision-making towards short-interval follow-up versus tissue sampling. From a retrospective 2015-2019 series of ultrasound-guided core needle biopsies performed by four board-certified breast radiologists using six ultrasound systems from three vendors, we collected 821 images of 834 suspicious breast masses from 819 patients, 404 malignant and 430 benign according to histopathology. A balanced image set of biopsy-proven benign (n = 299) and malignant (n = 299) lesions was used for training and cross-validation of ensembles of machine learning algorithms supervised during learning by histopathological diagnosis as a reference standard. Based on a majority vote (over 80% of the votes to have a valid prediction of benign lesion), an ensemble of support vector machines showed an ability to reduce the biopsy rate of benign lesions by 15% to 18%, always keeping a sensitivity over 94%, when externally tested on 236 images from two image sets: (1) 123 lesions (51 malignant and 72 benign) obtained from two ultrasound systems used for training and from a different one, resulting in a positive predictive value (PPV) of 45.9% (95% confidence interval 36.3-55.7%) versus a radiologists' PPV of 41.5% (p < 0.005), combined with a 98.0% sensitivity (89.6-99.9%); (2) 113 lesions (54 malignant and 59 benign) obtained from two ultrasound systems from vendors different from those used for training, resulting into a 50.5% PPV (40.4-60.6%) versus a radiologists' PPV of 47.8% (p < 0.005), combined with a 94.4% sensitivity (84.6-98.8%). Errors in BI-RADS 3 category (i.e., assigned by the model as BI-RADS 4) were 0.8% and 2.7% in the Testing set I and II, respectively. The board-certified breast radiologist accepted the BI-RADS classes assigned by the model in 114 masses (92.7%) and modified the BI-RADS classes of 9 breast masses (7.3%). In six of nine cases, the model performed better than the radiologist did, since it assigned a BI-RADS 3 classification to histopathology-confirmed benign masses that were classified as BI-RADS 4 by the radiologist.
引用
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页数:18
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