Inflammatory lesions and brain tumors: is it possible to differentiate them based on texture features in magnetic resonance imaging?

IF 1.8 3区 医学 Q4 TOXICOLOGY
Allan Felipe Fattori Alves, José Ricardo de Arruda Miranda, Fabiano Reis, Sergio Augusto Santana de Souza, Luciana Luchesi Rodrigues Alves, Laisson de Moura Feitoza, José Thiago de Souza de Castro, Diana Rodrigues de Pina
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引用次数: 15

Abstract

Background: Neuroimaging strategies are essential to locate, to elucidate the etiology, and to the follow up of brain disease patients. Magnetic resonance imaging (MRI) provides good cerebral soft-tissue contrast detection and diagnostic sensitivity. Inflammatory lesions and tumors are common brain diseases that may present a similar pattern of a cerebral ring enhancing lesion on MRI, and non-enhancing core (which may reflect cystic components or necrosis) leading to misdiagnosis. Texture analysis (TA) and machine learning approaches are computer-aided diagnostic tools that can be used to assist radiologists in such decisions.

Methods: In this study, we combined texture features with machine learning (ML) methods aiming to differentiate brain tumors from inflammatory lesions in magnetic resonance imaging. Retrospective examination of 67 patients, with a pattern of a cerebral ring enhancing lesion, 30 with inflammatory, and 37 with tumoral lesions were selected. Three different MRI sequences and textural features were extracted using gray level co-occurrence matrix and gray level run length. All diagnoses were confirmed by histopathology, laboratorial analysis or MRI.

Results: The features extracted were processed for the application of ML methods that performed the classification. T1-weighted images proved to be the best sequence for classification, in which the differentiation between inflammatory and tumoral lesions presented high accuracy (0.827), area under ROC curve (0.906), precision (0.837), and recall (0.912).

Conclusion: The algorithm obtained textures capable of differentiating brain tumors from inflammatory lesions, on T1-weghted images without contrast medium using the Random Forest machine learning classifier.

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炎性病变与脑肿瘤:能否根据磁共振成像的纹理特征进行区分?
背景:神经影像学策略对脑部疾病患者的定位、病因阐明和随访至关重要。磁共振成像(MRI)提供了良好的脑软组织对比检测和诊断灵敏度。炎性病变和肿瘤是常见的脑部疾病,在MRI上可能表现为类似的脑环增强病变模式,而非增强核心(可能反映囊性成分或坏死)导致误诊。纹理分析(TA)和机器学习方法是计算机辅助诊断工具,可用于帮助放射科医生做出此类决策。方法:在本研究中,我们将纹理特征与机器学习(ML)方法相结合,旨在在磁共振成像中区分脑肿瘤与炎性病变。回顾性检查67例患者,其中脑环增强型病变,炎性病变30例,肿瘤病变37例。利用灰度共现矩阵和灰度运行长度提取三种不同的MRI序列和纹理特征。所有诊断均经组织病理学、实验室分析或MRI证实。结果:对提取的特征进行处理,应用ML方法进行分类。t1加权图像是最佳的分类序列,其中炎症与肿瘤病变的鉴别准确率(0.827)、ROC曲线下面积(0.906)、精密度(0.837)、召回率(0.912)较高。结论:该算法使用随机森林机器学习分类器,在没有造影剂的t1加权图像上获得了能够区分脑肿瘤和炎性病变的纹理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.80
自引率
8.30%
发文量
39
审稿时长
6-12 weeks
期刊介绍: Journal of Venomous Animals and Toxins including Tropical Diseases (JVATiTD) is a non-commercial academic open access publication dedicated to research on all aspects of toxinology, venomous animals and tropical diseases. Its interdisciplinary content includes original scientific articles covering research on toxins derived from animals, plants and microorganisms. Topics of interest include, but are not limited to:systematics and morphology of venomous animals;physiology, biochemistry, pharmacology and immunology of toxins;epidemiology, clinical aspects and treatment of envenoming by different animals, plants and microorganisms;development and evaluation of antivenoms and toxin-derivative products;epidemiology, clinical aspects and treatment of tropical diseases (caused by virus, bacteria, algae, fungi and parasites) including the neglected tropical diseases (NTDs) defined by the World Health Organization.
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