Machine Learning-Based Ultrasound Texture Analysis in Differentiation of Benign Phyllodes Tumors from Borderline-Malignant Phyllodes Tumors

Author:

Basara Akin Isil1ORCID,Ozgul Hakan Abdullah1,Altay Canan1ORCID,Guray Durak Merih2ORCID,Aksoy Suleyman Ozkan3ORCID,Sevinc Ali Ibrahim3,Secil Mustafa1ORCID,Gulmez Hakan4ORCID,Balci Pinar1ORCID

Affiliation:

1. Radiology, Dokuz Eylul University Faculty of Medicine, Izmir, Turkey

2. Pathology, Dokuz Eylul University Faculty of Medicine, Izmir, Turkey

3. General Surgery, Dokuz Eylul University Faculty of Medicine, Izmir, Turkey

4. Family Medicine, İzmir Democracy University, Izmir, Turkey

Abstract

Abstract Purpose Phyllodes tumors (PTs) are uncommon fibroepithelial breast lesions that are classified as three different forms as benign phyllodes tumor (BPT), borderline phyllodes tumor (BoPT), and malignant phyllodes tumor (MPT). Conventional radiologic methods make only a limited contribution to exact diagnosis, and texture analysis data increase the diagnostic performance. In this study, we aimed to evaluate the contribution of texture analysis of US images (TAUI) of PTs in order to discriminate between BPTs and BoPTs-MPTs. Methods The number of patients was 63 (41 BPTs, 12 BoPTs, and 10 MPTs). Patients were divided into two groups (Group 1-BPT, Group 2-BoPT/MPT). TAUI with LIFEx software was performed retrospectively. An independent machine learning approach, MATLAB R2020a (Math- Works, Natick, Massachusetts) was used with the dataset with p < 0.004. Two machine learning approaches were used to build prediction models for differentiating between Group 1 and Group 2. Receiver operating characteristics (ROC) curve analyses were performed to evaluate the diagnostic performance of statistically significant texture data between phyllodes subgroups. Results In TAUI, 10 statistically significant second order texture values were identified as significant factors capable of differentiating among the two groups (p < 0.05). Both of the models of our dataset make a diagnostic contribution to the discrimination between BopTs-MPTs and BPTs. Conclusion In PTs, US is the main diagnostic method. Adding machine learning-based TAUI to conventional US findings can provide optimal diagnosis, thereby helping to choose the correct surgical method. Consequently, decreased local recurrence rates can be achieved.

Publisher

Georg Thieme Verlag KG

Subject

Radiology, Nuclear Medicine and imaging

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