Lateral elbow tendinopathy and artificial intelligence: Binary and multilabel findings detection using machine learning algorithms

被引:10
作者
Droppelmann, Guillermo [1 ,2 ,3 ]
Tello, Manuel [4 ]
Garcia, Nicolas [5 ]
Greene, Cristobal [6 ]
Jorquera, Carlos [7 ]
Feijoo, Felipe [4 ]
机构
[1] MEDS Clin, Res Ctr Med Exercise Sport & Hlth, Santiago, Chile
[2] Univ Catolica Murcia UCAM, Hlth Sci PhD Program, Murcia, Spain
[3] Harvard TH Chan Sch Publ Hlth, Principles & Practice Clin Res PPCR, Boston, MA 02115 USA
[4] Pontificia Univ Catolica Valparaiso, Sch Ind Engn, Valparaiso, Chile
[5] MEDS Clin, MSK Diagnost & Intervent Radiol Dept, Santiago, RM, Chile
[6] MEDS Clin, Hand & Elbow Unit, Dept Orthopaed Surg, Santiago, RM, Chile
[7] Univ Mayor, Fac Ciencias, Escuela Nutr & Dietet, Santiago, RM, Chile
关键词
AUC curve; diagnosis; random forest; tennis elbow; ultrasound; ULTRASOUND; EPICONDYLITIS; CLASSIFICATION; MAMMOGRAPHY; FUTURE; SEGMENTATION; EPIDEMIOLOGY; MANAGEMENT; FRACTURES; PROGNOSIS;
D O I
10.3389/fmed.2022.945698
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
BackgroundUltrasound (US) is a valuable technique to detect degenerative findings and intrasubstance tears in lateral elbow tendinopathy (LET). Machine learning methods allow supporting this radiological diagnosis. AimTo assess multilabel classification models using machine learning models to detect degenerative findings and intrasubstance tears in US images with LET diagnosis. Materials and methodsA retrospective study was performed. US images and medical records from patients with LET diagnosis from January 1st, 2017, to December 30th, 2018, were selected. Datasets were built for training and testing models. For image analysis, features extraction, texture characteristics, intensity distribution, pixel-pixel co-occurrence patterns, and scales granularity were implemented. Six different supervised learning models were implemented for binary and multilabel classification. All models were trained to classify four tendon findings (hypoechogenicity, neovascularity, enthesopathy, and intrasubstance tear). Accuracy indicators and their confidence intervals (CI) were obtained for all models following a K-fold-repeated-cross-validation method. To measure multilabel prediction, multilabel accuracy, sensitivity, specificity, and receiver operating characteristic (ROC) with 95% CI were used. ResultsA total of 30,007 US images (4,324 exams, 2,917 patients) were included in the analysis. The RF model presented the highest mean values in the area under the curve (AUC), sensitivity, and also specificity by each degenerative finding in the binary classification. The AUC and sensitivity showed the best performance in intrasubstance tear with 0.991 [95% CI, 099, 0.99], and 0.775 [95% CI, 0.77, 0.77], respectively. Instead, specificity showed upper values in hypoechogenicity with 0.821 [95% CI, 0.82, -0.82]. In the multilabel classifier, RF also presented the highest performance. The accuracy was 0.772 [95% CI, 0.771, 0.773], a great macro of 0.948 [95% CI, 0.94, 0.94], and a micro of 0.962 [95% CI, 0.96, 0.96] AUC scores were detected. Diagnostic accuracy, sensitivity, and specificity with 95% CI were calculated. ConclusionMachine learning algorithms based on US images with LET presented high diagnosis accuracy. Mainly the random forest model shows the best performance in binary and multilabel classifiers, particularly for intrasubstance tears.
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页数:12
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