Radiomics based Machine Learning Models for Classification of Prostate Cancer Grade Groups from Multi Parametric MRI Images.

IF 1.3 Q4 ENGINEERING, BIOMEDICAL
Journal of Medical Signals & Sensors Pub Date : 2024-12-03 eCollection Date: 2024-01-01 DOI:10.4103/jmss.jmss_47_23
Fatemeh Zandie, Mohammad Salehi, Asghar Maziar, Mohammad Reza Bayatiani, Reza Paydar
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引用次数: 0

Abstract

Purpose: This study aimed to investigate the performance of multiparametric magnetic resonance imaging (mpMRI) radiomic feature-based machine learning (ML) models in classifying the Gleason grade group (GG) of prostate cancer.

Methods: In this retrospective study, a total of 203 patients with histopathologically confirmed prostate cancer who underwent mpMRI before prostate biopsy were included. After manual segmentation, radiomic features (RFs) were extracted from T2-weighted, apparent diffusion coefficient, and high b-value diffusion-weighted magnetic resonance imaging (DWMRI). Patients were split into training sets and testing sets according to a ratio of 8:2. A pipeline considering combinations of two feature selection (FS) methods and six ML classifiers was developed and evaluated. The performance of models was assessed using the accuracy, sensitivity, precision, F1-measure, and the area under curve (AUC).

Results: On high b-value DWMRI-derived features, a combination of FS method recursive feature elimination (RFE) and classifier random forest achieved the highest performance for classification of prostate cancer into five GGs, with 97.0% accuracy, 98.0% sensitivity, 98.0% precision, and 97.0% F1-measure. The method also achieved an average AUC for GG of 98%.

Conclusion: Preoperative mpMRI radiomic analysis based on ML, as a noninvasive approach, showed good performance for classification of prostate cancer into five GGs.

Advances in knowledge: Herein, radiomic models based on preoperative mpMRI and ML were developed to classify prostate cancer into 5 GGs. Our study provides evidence that analysis of quantitative RFs extracted from high b-value DWMRI images based on a combination of FS method RFE and classifier random forest can be applied for multiclass grading of prostate cancer with an accuracy of 97.0%.

基于放射组学的机器学习模型用于多参数MRI图像中前列腺癌分级组的分类。
目的:探讨基于多参数磁共振成像(mpMRI)放射学特征的机器学习(ML)模型在前列腺癌Gleason分级组(GG)分类中的应用效果。方法:回顾性研究203例经组织病理学证实的前列腺癌患者,在前列腺活检前行mpMRI检查。人工分割后,从t2加权、表观扩散系数和高b值弥散加权磁共振成像(DWMRI)中提取放射特征(RFs)。将患者按8:2的比例分成训练集和测试集。开发并评估了两种特征选择(FS)方法和六种ML分类器组合的管道。采用准确度、灵敏度、精密度、F1-measure和曲线下面积(AUC)评价模型的性能。结果:在高b值dwmri衍生的特征上,FS方法递归特征消除(RFE)和分类器随机森林相结合的方法将前列腺癌分类为5个gg,准确率为97.0%,灵敏度为98.0%,精密度为98.0%,F1-measure为97.0%。该方法对GG的平均AUC为98%。结论:术前基于ML的mpMRI放射学分析作为一种无创的方法,对前列腺癌的5种gg分类具有良好的效果。知识进展:本文建立了基于术前mpMRI和ML的放射学模型,将前列腺癌分为5种gg。我们的研究证明,结合FS方法RFE和分类器随机森林对高b值DWMRI图像提取的定量rf进行分析,可以应用于前列腺癌的多类别分级,准确率为97.0%。
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来源期刊
Journal of Medical Signals & Sensors
Journal of Medical Signals & Sensors ENGINEERING, BIOMEDICAL-
CiteScore
2.30
自引率
0.00%
发文量
53
审稿时长
33 weeks
期刊介绍: JMSS is an interdisciplinary journal that incorporates all aspects of the biomedical engineering including bioelectrics, bioinformatics, medical physics, health technology assessment, etc. Subject areas covered by the journal include: - Bioelectric: Bioinstruments Biosensors Modeling Biomedical signal processing Medical image analysis and processing Medical imaging devices Control of biological systems Neuromuscular systems Cognitive sciences Telemedicine Robotic Medical ultrasonography Bioelectromagnetics Electrophysiology Cell tracking - Bioinformatics and medical informatics: Analysis of biological data Data mining Stochastic modeling Computational genomics Artificial intelligence & fuzzy Applications Medical softwares Bioalgorithms Electronic health - Biophysics and medical physics: Computed tomography Radiation therapy Laser therapy - Education in biomedical engineering - Health technology assessment - Standard in biomedical engineering.
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