Mahajan Abhishek, Burrewar Mayur, Agarwal Ujjwal, Kss Bharadwaj, Mlv Apparao, Guha Amrita, Sahu Arpita, Choudhari Amit, Pawar Vivek, Punia Vivek, Epari Sridhar, Sahay Ayushi, Gupta Tejpal, Chinnaswamy Girish, Shetty Prakash, Moiyadi Aliasgar
Clatterbridge Centre for Oncology NHS Foundation Trust, L7 8YA, Liverpool, UK.
Department of Radiodiagnosis, Tata Memorial Hospital, Parel, Mumbai 400012, Maharashtra, India.
Explor Target Antitumor Ther. 2023;4(4):669-684. doi: 10.37349/etat.2023.00159. Epub 2023 Aug 30.
Early diagnosis of paediatric brain tumors significantly improves the outcome. The aim is to study magnetic resonance imaging (MRI) features of paediatric brain tumors and to develop an automated segmentation (AS) tool which could segment and classify tumors using deep learning methods and compare with radiologist assessment.
This study included 94 cases, of which 75 were diagnosed cases of ependymoma, medulloblastoma, brainstem glioma, and pilocytic astrocytoma and 19 were normal MRI brain cases. The data was randomized into training data, 64 cases; test data, 21 cases and validation data, 9 cases to devise a deep learning algorithm to segment the paediatric brain tumor. The sensitivity, specificity, positive predictive value (PPV), negative predictive value (NPV), and accuracy of the deep learning model were compared with radiologist's findings. Performance evaluation of AS was done based on Dice score and Hausdorff95 distance.
Analysis of MRI semantic features was done with necrosis and haemorrhage as predicting features for ependymoma, diffusion restriction and cystic changes were predictors for medulloblastoma. The accuracy of detecting abnormalities was 90%, with a specificity of 100%. Further segmentation of the tumor into enhancing and non-enhancing components was done. The segmentation results for whole tumor (WT), enhancing tumor (ET), and non-enhancing tumor (NET) have been analyzed by Dice score and Hausdorff95 distance. The accuracy of prediction of all MRI features was compared with experienced radiologist's findings. Substantial agreement observed between the classification by model and the radiologist's given classification [K-0.695 (K is Cohen's kappa score for interrater reliability)].
The deep learning model had very high accuracy and specificity for predicting the magnetic resonance (MR) characteristics and close to 80% accuracy in predicting tumor type. This model can serve as a potential tool to make a timely and accurate diagnosis for radiologists not trained in neuroradiology.
小儿脑肿瘤的早期诊断可显著改善预后。本研究旨在探讨小儿脑肿瘤的磁共振成像(MRI)特征,并开发一种自动分割(AS)工具,该工具可利用深度学习方法对肿瘤进行分割和分类,并与放射科医生的评估结果进行比较。
本研究纳入94例病例,其中75例为室管膜瘤、髓母细胞瘤、脑干胶质瘤和毛细胞型星形细胞瘤的确诊病例,19例为MRI脑部正常病例。将数据随机分为训练数据64例、测试数据21例和验证数据9例,以设计一种深度学习算法来分割小儿脑肿瘤。将深度学习模型的敏感性、特异性、阳性预测值(PPV)、阴性预测值(NPV)和准确性与放射科医生的检查结果进行比较。基于Dice分数和Hausdorff95距离对自动分割进行性能评估。
以坏死和出血作为室管膜瘤的预测特征进行MRI语义特征分析,弥散受限和囊性变是髓母细胞瘤的预测指标。检测异常的准确率为90%,特异性为100%。进一步将肿瘤分为强化和非强化成分。通过Dice分数和Hausdorff95距离分析了整个肿瘤(WT)、强化肿瘤(ET)和非强化肿瘤(NET)的分割结果。将所有MRI特征的预测准确性与经验丰富的放射科医生的检查结果进行比较。模型分类与放射科医生给出的分类之间观察到高度一致性[K = 0.695(K为评价者间可靠性的Cohen's kappa评分)]。
深度学习模型在预测磁共振(MR)特征方面具有很高的准确性和特异性,在预测肿瘤类型方面的准确性接近80%。该模型可作为一种潜在工具,为未接受神经放射学培训的放射科医生进行及时准确的诊断。