Mahajan Abhishek, B Gurukrishna, Wadhwa Shweta, Agarwal Ujjwal, Baid Ujjwal, Talbar Sanjay, Janu Amit Kumar, Patil Vijay, Noronha Vanita, Mummudi Naveen, Tibdewal Anil, Agarwal J P, Yadav Subash, Kumar Kaushal Rajiv, Puranik Ameya, Purandare Nilendu, Prabhash Kumar
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):657-668. doi: 10.37349/etat.2023.00158. Epub 2023 Aug 30.
The aim of this study was to investigate the feasibility of developing a deep learning (DL) algorithm for classifying brain metastases from non-small cell lung cancer (NSCLC) into epidermal growth factor receptor () mutation and anaplastic lymphoma kinase () rearrangement groups and to compare the accuracy with classification based on semantic features on imaging.
Data set of 117 patients was analysed from 2014 to 2018 out of which 33 patients were positive, 43 patients were positive and 41 patients were negative for either mutation. Convolutional neural network (CNN) architecture efficient net was used to study the accuracy of classification using T1 weighted (T1W) magnetic resonance imaging (MRI) sequence, T2 weighted (T2W) MRI sequence, T1W post contrast (T1post) MRI sequence, fluid attenuated inversion recovery (FLAIR) MRI sequences. The dataset was divided into 80% training and 20% testing. The associations between mutation status and semantic features, specifically sex, smoking history, mutation and rearrangement status, extracranial metastasis, performance status and imaging variables of brain metastasis were analysed using descriptive analysis [chi-square test (χ)], univariate and multivariate logistic regression analysis assuming 95% confidence interval (CI).
In this study of 117 patients, the analysis by semantic method showed 79.2% of the patients belonged to positive were non-smokers as compared to double negative groups ( = 0.03). There was a 10-fold increase in positivity as compared to positivity in ring enhancing lesions patients ( = 0.015) and there was also a 6.4-fold increase in positivity as compared to double negative groups in meningeal involvement patients ( = 0.004). Using CNN Efficient Net DL model, the study achieved 76% accuracy in classifying rearrangement and mutations without manual segmentation of metastatic lesions. Analysis of the manually segmented dataset resulted in improved accuracy of 89% through this model.
Both semantic features and DL model showed comparable accuracy in classifying mutation and rearrangement. Both methods can be clinically used to predict mutation status while biopsy or genetic testing is undertaken.
本研究旨在探讨开发一种深度学习(DL)算法的可行性,该算法可将非小细胞肺癌(NSCLC)脑转移瘤分为表皮生长因子受体(EGFR)突变型和间变性淋巴瘤激酶(ALK)重排型,并将其准确性与基于影像学语义特征的分类方法进行比较。
分析了2014年至2018年117例患者的数据集,其中33例患者EGFR阳性,43例患者ALK阳性,41例患者两种突变均为阴性。使用卷积神经网络(CNN)架构的高效网络,利用T1加权(T1W)磁共振成像(MRI)序列、T2加权(T2W)MRI序列、T1加权增强后(T1post)MRI序列、液体衰减反转恢复(FLAIR)MRI序列研究分类的准确性。数据集分为80%训练集和20%测试集。采用描述性分析[卡方检验(χ²)]、单因素和多因素逻辑回归分析(假设95%置信区间(CI)),分析突变状态与语义特征之间的关联,具体包括性别、吸烟史、EGFR突变和ALK重排状态、颅外转移、体能状态以及脑转移瘤的影像学变量。
在这项对117例患者的研究中,语义学方法分析显示,与双阴性组相比,EGFR阳性患者中有79.2%为非吸烟者(P = 0.03)。在环形强化病灶患者中,EGFR阳性率较ALK阳性率增加了10倍(P = 0.015);在脑膜受累患者中,EGFR阳性率较双阴性组增加了6.4倍(P = 0.004)。使用CNN高效网络DL模型,该研究在不手动分割转移瘤灶的情况下,对ALK重排和EGFR突变进行分类的准确率达到76%。通过该模型对人工分割的数据集进行分析,准确率提高到了89%。
在对EGFR突变和ALK重排进行分类时,语义特征和DL模型显示出相当的准确性。在进行活检或基因检测时,这两种方法均可在临床上用于预测突变状态。