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使用深度学习和基于影像组学的机器学习方法从胶质母细胞瘤中鉴别原发性中枢神经系统淋巴瘤——一项系统评价和荟萃分析

Classifying primary central nervous system lymphoma from glioblastoma using deep learning and radiomics based machine learning approach - a systematic review and meta-analysis.

作者信息

Guha Amrita, Goda Jayant S, Dasgupta Archya, Mahajan Abhishek, Halder Soutik, Gawde Jeetendra, Talole Sanjay

机构信息

Department of Radio Diagnosis, Tata Memorial Centre, Homi Bhaba National Institute, Mumbai, India.

Department of Radiation Oncology, Tata Memorial Centre, Homi Bhaba National Institute, Mumbai, India.

出版信息

Front Oncol. 2022 Oct 3;12:884173. doi: 10.3389/fonc.2022.884173. eCollection 2022.

Abstract

BACKGROUND

Glioblastoma (GBM) and primary central nervous system lymphoma (PCNSL) are common in elderly yet difficult to differentiate on MRI. Their management and prognosis are quite different. Recent surge of interest in predictive analytics, using machine learning (ML) from radiomic features and deep learning (DL) for diagnosing, predicting response and prognosticating disease has evinced interest among radiologists and clinicians. The objective of this systematic review and meta-analysis was to evaluate the deep learning & ML algorithms in classifying PCNSL from GBM.

METHODS

The authors performed a systematic review of the literature from MEDLINE, EMBASE and the Cochrane central trials register for the search strategy in accordance with PRISMA guidelines to select and evaluate studies that included themes of ML, DL, AI, GBM, PCNSL. All studies reporting on ML algorithms or DL that for differentiating PCNSL from GBM on MR imaging were included. These studies were further narrowed down to focus on works published between 2018 and 2021. Two researchers independently conducted the literature screening, database extraction and risk bias assessment. The extracted data was synthesised and analysed by forest plots. Outcomes assessed were test characteristics such as accuracy, sensitivity, specificity and balanced accuracy.

RESULTS

Ten articles meeting the eligibility criteria were identified addressing use of ML and DL in training and validation classifiers to distinguish PCNSL from GBM on MR imaging. The total sample size was 1311 in the included studies. ML approach was used in 6 studies while DL in 4 studies. The lowest reported sensitivity was 80%, while the highest reported sensitivity was 99% in studies in which ML and DL was directly compared with the gold standard histopathology. The lowest reported specificity was 87% while the highest reported specificity was 100%. The highest reported balanced accuracy was 100% and the lowest was 84%.

CONCLUSIONS

Extensive search of the database revealed a limited number of studies that have applied ML or DL to differentiate PCNSL from GBM. Of the currently published studies, Both DL & ML algorithms have demonstrated encouraging results and certainly have the potential to aid neurooncologists in taking preoperative decisions in the future leading to not only reduction in morbidities but also be cost effective.

摘要

背景

胶质母细胞瘤(GBM)和原发性中枢神经系统淋巴瘤(PCNSL)在老年人中较为常见,且在磁共振成像(MRI)上难以区分。它们的治疗方法和预后有很大差异。最近,利用来自放射组学特征的机器学习(ML)和深度学习(DL)进行预测分析以诊断、预测反应和疾病预后的研究引起了放射科医生和临床医生的关注。本系统评价和荟萃分析的目的是评估深度学习和机器学习算法在区分PCNSL和GBM方面的作用。

方法

作者按照PRISMA指南,对MEDLINE、EMBASE和Cochrane中心试验注册库中的文献进行了系统评价,以选择和评估包含机器学习、深度学习、人工智能、GBM、PCNSL等主题的研究。纳入所有报告使用ML算法或DL在磁共振成像上区分PCNSL和GBM的研究。这些研究进一步缩小范围,聚焦于2018年至2021年发表的作品。两名研究人员独立进行文献筛选、数据库提取和风险偏倚评估。提取的数据通过森林图进行综合分析。评估的结果是测试特征,如准确性、敏感性、特异性和平衡准确性。

结果

确定了10篇符合纳入标准的文章,涉及使用ML和DL训练和验证分类器以在磁共振成像上区分PCNSL和GBM。纳入研究的总样本量为1311例。6项研究使用了ML方法,4项研究使用了DL方法。在将ML和DL与金标准组织病理学直接比较的研究中,报告的最低敏感性为80%,最高敏感性为99%。报告的最低特异性为87%,最高特异性为100%。报告的最高平衡准确性为100%,最低为84%。

结论

对数据库的广泛检索发现,应用ML或DL区分PCNSL和GBM的研究数量有限。在目前已发表的研究中,DL和ML算法均显示出令人鼓舞的结果,并且肯定有潜力帮助神经肿瘤学家在未来做出术前决策,不仅可以降低发病率,还具有成本效益。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/eef7/9574102/02188daae64c/fonc-12-884173-g001.jpg

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