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一种结合放射组学和机器学习的方法,用于在公开可用的MRI数据集上区分具有临床意义的前列腺病变。

A Combined Radiomics and Machine Learning Approach to Distinguish Clinically Significant Prostate Lesions on a Publicly Available MRI Dataset.

作者信息

Donisi Leandro, Cesarelli Giuseppe, Castaldo Anna, De Lucia Davide Raffaele, Nessuno Francesca, Spadarella Gaia, Ricciardi Carlo

机构信息

Department of Advanced Biomedical Sciences, University of Naples "Federico II", 80131 Naples, Italy.

Bioengineering Unit, Institute of Care and Scientific Research Maugeri, 27100 Pavia, Italy.

出版信息

J Imaging. 2021 Oct 18;7(10):215. doi: 10.3390/jimaging7100215.

Abstract

Although prostate cancer is one of the most common causes of mortality and morbidity in advancing-age males, early diagnosis improves prognosis and modifies the therapy of choice. The aim of this study was the evaluation of a combined radiomics and machine learning approach on a publicly available dataset in order to distinguish a clinically significant from a clinically non-significant prostate lesion. A total of 299 prostate lesions were included in the analysis. A univariate statistical analysis was performed to prove the goodness of the 60 extracted radiomic features in distinguishing prostate lesions. Then, a 10-fold cross-validation was used to train and test some models and the evaluation metrics were calculated; finally, a hold-out was performed and a wrapper feature selection was applied. The employed algorithms were Naïve bayes, K nearest neighbour and some tree-based ones. The tree-based algorithms achieved the highest evaluation metrics, with accuracies over 80%, and area-under-the-curve receiver-operating characteristics below 0.80. Combined machine learning algorithms and radiomics based on clinical, routine, multiparametric, magnetic-resonance imaging were demonstrated to be a useful tool in prostate cancer stratification.

摘要

尽管前列腺癌是老年男性死亡和发病的最常见原因之一,但早期诊断可改善预后并改变首选治疗方法。本研究的目的是在一个公开可用的数据集上评估一种联合放射组学和机器学习方法,以区分具有临床意义和无临床意义的前列腺病变。分析共纳入299个前列腺病变。进行单变量统计分析以证明提取的60个放射组学特征在区分前列腺病变方面的有效性。然后,使用10折交叉验证来训练和测试一些模型,并计算评估指标;最后,进行留出法并应用包装特征选择。所采用的算法有朴素贝叶斯、K近邻和一些基于树的算法。基于树的算法获得了最高的评估指标,准确率超过80%,曲线下面积的受试者工作特征低于0.80。基于临床、常规、多参数磁共振成像的联合机器学习算法和放射组学被证明是前列腺癌分层的有用工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3ae6/8540196/65ba1cba4b47/jimaging-07-00215-g001.jpg

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