T1 mapping-based radiomics in the identification of histological types of lung cancer: a reproducibility and feasibility study.

IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING BMC Medical Imaging Pub Date : 2024-11-14 DOI:10.1186/s12880-024-01487-y
Jianqin Jiang, Yong Xiao, Jia Liu, Lei Cui, Weiwei Shao, Shaowei Hao, Gaofeng Xu, Yigang Fu, Chunhong Hu
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Abstract

Background: T1 mapping can quantify the longitudinal relaxation time of tissues. This study aimed to investigate the repeatability and reproducibility of T1 mapping radiomics features of lung cancer and the feasibility of T1 mapping-based radiomics model to predict its pathological types.

Methods: The chest T1 mapping images and clinical characteristics of 112 lung cancer patients (54 with adenocarcinoma and 58 with other types of lung cancer) were collected retrospectively. 54 patients underwent twice short-term T1 mapping scans. Regions of interest were manually delineated on T1 mapping pseudo-color images to measure the mean native T1 values of lung cancer, and radiomics features were extracted using the semi-automatic segmentation method by two independent observers. The patients were randomly divided into training group (77 cases) and validation group (35 cases) with the ratio of 7:3. Interclass correlation coefficients (ICCs), Student's t-test or Mann-Whitney U tests and least absolute shrinkage and selection operator (LASSO) were used for feature selection. The optimum features were selected to establish a logistic regression (LR) radiomics model. Independent sample t-test, Mann Whitney U-test or chi square test were used to compare the differences of clinical characteristics and T1 values. Performance was compared by the area under the receiver operating characteristic (ROC) curve (AUC).

Results: In the training group, smoking history, lesion type and native T1 values were different between adenocarcinoma and non-adenocarcinoma patients (P = 0.004-0.038). There were 1035 (54.30%) radiomics features meet the intra-and inter-observer, and test-retest reproducibility with ICC > 0.80. After feature dimensionality reduction and model construction, the AUC of T1 mapping-based radiomics model for predicting the pathological types of lung cancer was 0.833 and 0.843, respectively, in the training and validation cohorts. The AUCs of T1 value and clinical model (including smoking history and lesion type) were 0.657 and 0.692 in the training group, and 0.722 and 0.686 in the validation group. Combined with T1 mapping radiomics, clinical model and T1 value to establish a combined model, the prediction efficiency was further improved to 0.895 and 0.915 in the training and validation groups.

Conclusions: About 50% of the T1 mapping-based radiomics features displayed relatively poor repeatability and reproducibility. While T1 mapping-based radiomics model is valuable in identification of histological types of lung cancer despite the measurement variability. Combination of T1 mapping radiomics model, clinical characteristics and native T1 value can improve the predictive value of pathological types of lung cancer.

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基于 T1 图谱的放射组学在肺癌组织学类型鉴定中的应用:可重复性和可行性研究。
背景:T1图谱可以量化组织的纵向弛豫时间。本研究旨在探讨肺癌 T1 图谱放射组学特征的重复性和再现性,以及基于 T1 图谱的放射组学模型预测肺癌病理类型的可行性:方法:回顾性收集112名肺癌患者(54名腺癌患者和58名其他类型肺癌患者)的胸部T1映射图像和临床特征。54 名患者接受了两次短期 T1 映像扫描。在 T1 映射伪彩色图像上手动划分感兴趣区,测量肺癌的平均原生 T1 值,并由两名独立观察者使用半自动分割方法提取放射组学特征。患者按 7:3 的比例随机分为训练组(77 例)和验证组(35 例)。采用类间相关系数(ICC)、学生 t 检验或 Mann-Whitney U 检验以及最小绝对收缩和选择算子(LASSO)进行特征选择。选出的最佳特征用于建立逻辑回归(LR)放射组学模型。独立样本 t 检验、曼-惠特尼 U 检验或卡方检验用于比较临床特征和 T1 值的差异。用接收器操作特征曲线(ROC)下面积(AUC)比较结果:在训练组中,腺癌和非腺癌患者的吸烟史、病变类型和原始 T1 值存在差异(P = 0.004-0.038)。有1035个(54.30%)放射组学特征符合观察者内、观察者间和重复测试的重现性,ICC>0.80。经过特征降维和模型构建后,基于 T1 映射的放射组学模型预测肺癌病理类型的 AUC 在训练组和验证组中分别为 0.833 和 0.843。在训练组中,T1值和临床模型(包括吸烟史和病变类型)的AUC分别为0.657和0.692,在验证组中分别为0.722和0.686。结合T1映射放射组学、临床模型和T1值建立综合模型后,训练组和验证组的预测效率进一步提高到0.895和0.915:结论:基于 T1 映射的放射组学特征中约有 50%的重复性和再现性相对较差。尽管存在测量变异性,但基于 T1 映射的放射组学模型对肺癌组织学类型的鉴定仍有价值。将T1映射放射组学模型、临床特征和原始T1值相结合,可提高肺癌病理类型的预测价值。
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来源期刊
BMC Medical Imaging
BMC Medical Imaging RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
4.60
自引率
3.70%
发文量
198
审稿时长
27 weeks
期刊介绍: BMC Medical Imaging is an open access journal publishing original peer-reviewed research articles in the development, evaluation, and use of imaging techniques and image processing tools to diagnose and manage disease.
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