利用多参数磁共振成像中的多模态放射组学特征和特征级相关性提高前列腺癌侵袭性的预测能力

IF 1.6 4区 医学 Q4 ENGINEERING, BIOMEDICAL
Julip Jung, Helen Hong, Sung Il Hwang
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引用次数: 0

摘要

目的 本研究旨在利用从多模态图像中提取的各种特征类型的互补信息,提高对前列腺癌侵袭性的预测能力。我们提出了一种预测模型,该模型结合了联合特征矩阵(JFM)特征,以捕捉 T2 加权磁共振成像(T2wMRI)和表观弥散系数图(ADC)之间的特征级相关性。方法该方法包括将 T2wMRI 和 ADC 与地面真实病理图像配准,从而根据病理图像在 T2wMRI 和 ADC 中识别前列腺癌区域。然后从 T2wMRI 和 ADC 的每个区域提取单模态放射体特征,同时提取多模态放射体特征 JFM 以捕捉特征级关系。随后,使用所提取特征的各种组合训练随机森林分类器来预测前列腺癌的侵袭性,并进行特征重要性分析以确定对预测结果最重要的特征。具体来说,与单独使用 T2wMRI 和 ADC 特征相比,使用协合特征可将特异性分别提高 6.71% 和 2.94%,这表明同时考虑 T2wMRI 和 ADC 特征可提高区分低格里森评分(GS)组的能力。此外,与并合特征、平均特征和乘法特征相比,单独使用 JFM 特征显示出更高的曲线下面积(AUC)。然而,将 T2wMRI 和 ADC 特征与 JFM 特征相结合可获得最佳性能,与基于 T2wMRI、ADC、Concatenated、Averaged、Multiplied 和 JFM 特征的预测模型相比,AUC 分别提高了 4.41%、5.97%、5.97%、7.58%、5.97% 和 2.9%。结论所提出的方法能有效捕捉多种磁共振成像模式特征的联合分布,并证明考虑特征级相关性能改善前列腺癌侵袭性的预测结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Improving Predictive Ability of Prostate Cancer Aggressiveness Using Multi-Modal Radiomic Features and Feature-Level Correlations in Multi-parametric MRI

Improving Predictive Ability of Prostate Cancer Aggressiveness Using Multi-Modal Radiomic Features and Feature-Level Correlations in Multi-parametric MRI

Purpose

This study aims to improve the predictive ability of prostate cancer aggressiveness by leveraging complementary information from various feature types extracted from multi-modal images. We propose a prediction model that incorporates Joint Feature Matrix (JFM) features to capture feature-level correlations between T2-weighted magnetic resonance image (T2wMRI) and apparent diffusion coefficient map (ADC).

Methods

The method involves registering T2wMRI and ADC with ground truth pathology image, enabling identification of prostate cancer regions in T2wMRI and ADC based on pathology image. Uni-modal radiomic features are then extracted from each region of T2wMRI and ADC, while the multi-modal radiomic feature, JFM, is extracted to capture feature-level relationships. Subsequently, a random forest classifier is trained using various combinations of the extracted features to predict aggressiveness of prostate cancer and a feature importance analysis is conducted to identify the most significant features on prediction results.

Results

The experimental results show that incorporating multi-modal radiomic features improves the performance of prediction models. Specifically, using the Concatenated feature enhances specificity by 6.71% and 2.94% compared to the use of T2wMRI and ADC features alone, respectively, indicating improved ability to distinguish the low Gleason score (GS) group by considering both T2wMRI and ADC features. Furthermore, JFM features alone exhibit a higher area under the curve (AUC) compared to Concatenated, Averaged, and Multiplied features. However, the best performance is achieved by combining T2wMRI and ADC features with JFM features, resulting in an AUC improvement of 4.41%, 5.97%, 5.97%, 7.58%, 5.97%, and 2.9% compared to prediction models based on T2wMRI, ADC, Concatenated, Averaged, Multiplied, and JFM features, respectively.

Conclusion

The proposed method effectively captures the joint distribution of features from multiple MRI modalities and demonstrates that consideration of feature-level correlations leads to improved prediction results for prostate cancer aggressiveness.

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来源期刊
CiteScore
4.30
自引率
5.00%
发文量
81
审稿时长
3 months
期刊介绍: The purpose of Journal of Medical and Biological Engineering, JMBE, is committed to encouraging and providing the standard of biomedical engineering. The journal is devoted to publishing papers related to clinical engineering, biomedical signals, medical imaging, bio-informatics, tissue engineering, and so on. Other than the above articles, any contributions regarding hot issues and technological developments that help reach the purpose are also included.
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