Abstract

The study aim was to utilise multiple feature selection methods in order to select the most important parameters from clinical patient data for high-intensity focused ultrasound (HIFU) treatment outcome classification in uterine fibroids. The study was retrospective using patient data from 66 HIFU treatments with 89 uterine fibroids. A total of 39 features were extracted from the patient data and 14 different filter-based feature selection methods were used to select the most informative features. The selected features were then used in a support vector classification (SVC) model to evaluate the performance of these parameters in predicting HIFU therapy outcome. The therapy outcome was defined as non-perfused volume (NPV) ratio in three classes: <30%, 30–80% or >80%. The ten most highly ranked features in order were: fibroid diameter, subcutaneous fat thickness, fibroid volume, fibroid distance, Funaki type I, fundus location, gravidity, Funaki type III, submucosal fibroid type and urinary symptoms. The maximum F1-micro classification score was 0.63 using the top ten features from Mutual Information Maximisation (MIM) and Joint Mutual Information (JMI) feature selection methods. Classification performance of HIFU therapy outcome prediction in uterine fibroids is highly dependent on the chosen feature set which should be determined prior using different classifiers.

Highlights

  • Uterine fibroids are benign tumours of the uterus which are formed by the excessive growth of smooth-muscle cells in the wall of the uterus1

  • Not all patients diagnosed with uterine fibroids are suitable candidates for high-intensity focused ultrasound (HIFU) treatment, which currently limits the success rate of the therapy outcome

  • Funaki et al.19 divided the intensities in T2-weighted MR images of uterine fibroids into three separate classes using threshold values based on the skeletal muscle and myometrium

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Summary

Introduction

Uterine fibroids (aka myomas) are benign tumours of the uterus which are formed by the excessive growth of smooth-muscle cells in the wall of the uterus1 They tend to be round-shaped with well-defined boundaries and their diameter can range from 1 cm to more than 10 cm. Not all patients diagnosed with uterine fibroids are suitable candidates for HIFU treatment, which currently limits the success rate of the therapy outcome. In clinical practice suitable patients for the HIFU therapy are typically screened by a radiologist together with a gynaecologist8 For this purpose, evaluation criteria have been formed for patient selection, but these are usually only based on MR images, and lack more comprehensive inclusion of clinical aspects such as www.nature.com/scientificreports/. The aim of this study was to utilise different filter-based feature selection methods to identify the most important features from clinical patient data for HIFU therapy outcome classification in uterine fibroids. Are there any specific feature selection methods that perform better in choosing these features?

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