Phenotyping the Histopathological Subtypes of Non-Small-Cell Lung Carcinoma: How Beneficial Is Radiomics?

被引:16
作者
Pasini, Giovanni [1 ,2 ]
Stefano, Alessandro [2 ]
Russo, Giorgio [2 ]
Comelli, Albert [2 ,3 ]
Marinozzi, Franco [1 ]
Bini, Fabiano [1 ]
机构
[1] Sapienza Univ Rome, Dept Mech & Aerosp Engn, Eudossiana 18, I-00184 Rome, Italy
[2] Natl Res Council IBFM CNR, Inst Mol Bioimaging & Physiol, I-90015 Cefalu, Italy
[3] Ri MED Fdn, Via Bandiera 11, I-90133 Palermo, Italy
关键词
radiomics; CT; non-small-cell lung carcinoma; NSCLC; phenotyping; multicenter; harmonization; machine learning; CLASSIFICATION; HARMONIZATION; FRAMEWORK; SCANNERS; SYSTEM; IMAGES; TUMORS;
D O I
10.3390/diagnostics13061167
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
The aim of this study was to investigate the usefulness of radiomics in the absence of well-defined standard guidelines. Specifically, we extracted radiomics features from multicenter computed tomography (CT) images to differentiate between the four histopathological subtypes of non-small-cell lung carcinoma (NSCLC). In addition, the results that varied with the radiomics model were compared. We investigated the presence of the batch effects and the impact of feature harmonization on the models' performance. Moreover, the question on how the training dataset composition influenced the selected feature subsets and, consequently, the model's performance was also investigated. Therefore, through combining data from the two publicly available datasets, this study involves a total of 152 squamous cell carcinoma (SCC), 106 large cell carcinoma (LCC), 150 adenocarcinoma (ADC), and 58 no other specified (NOS). Through the matRadiomics tool, which is an example of Image Biomarker Standardization Initiative (IBSI) compliant software, 1781 radiomics features were extracted from each of the malignant lesions that were identified in CT images. After batch analysis and feature harmonization, which were based on the ComBat tool and were integrated in matRadiomics, the datasets (the harmonized and the non-harmonized) were given as an input to a machine learning modeling pipeline. The following steps were articulated: (i) training-set/test-set splitting (80/20); (ii) a Kruskal-Wallis analysis and LASSO linear regression for the feature selection; (iii) model training; (iv) a model validation and hyperparameter optimization; and (v) model testing. Model optimization consisted of a 5-fold cross-validated Bayesian optimization, repeated ten times (inner loop). The whole pipeline was repeated 10 times (outer loop) with six different machine learning classification algorithms. Moreover, the stability of the feature selection was evaluated. Results showed that the batch effects were present even if the voxels were resampled to an isotropic form and whether feature harmonization correctly removed them, even though the models' performances decreased. Moreover, the results showed that a low accuracy (61.41%) was reached when differentiating between the four subtypes, even though a high average area under curve (AUC) was reached (0.831). Further, a NOS subtype was classified as almost completely correct (true positive rate similar to 90%). The accuracy increased (77.25%) when only the SCC and ADC subtypes were considered, as well as when a high AUC (0.821) was obtained-although harmonization decreased the accuracy to 58%. Moreover, the features that contributed the most to models' performance were those extracted from wavelet decomposed and Laplacian of Gaussian (LoG) filtered images and they belonged to the texture feature class.. In conclusion, we showed that our multicenter data were affected by batch effects, that they could significantly alter the models' performance, and that feature harmonization correctly removed them. Although wavelet features seemed to be the most informative features, an absolute subset could not be identified since it changed depending on the training/testing splitting. Moreover, performance was influenced by the chosen dataset and by the machine learning methods, which could reach a high accuracy in binary classification tasks, but could underperform in multiclass problems. It is, therefore, essential that the scientific community propose a more systematic radiomics approach, focusing on multicenter studies, with clear and solid guidelines to facilitate the translation of radiomics to clinical practice.
引用
收藏
页数:27
相关论文
共 50 条
  • [21] Cytomorphology is Often Insufficient to Categorize Non-Small-Cell Lung Carcinoma on FNA Specimens
    Witt, Benjamin L.
    Cohen, Michael B.
    Chadwick, Barbara E.
    Stephenson, Philip D.
    Abasolo, Peter
    Schmidt, Robert L.
    DIAGNOSTIC CYTOPATHOLOGY, 2016, 44 (02) : 73 - 79
  • [22] The role of molecular pathology in non-small-cell lung carcinoma-now and in the future
    Brandao, G. D. A.
    Brega, E. F.
    Spatz, A.
    CURRENT ONCOLOGY, 2012, 19 : S24 - S32
  • [23] Personalized medicine and treatment approaches in non-small-cell lung carcinoma
    Vadakara, Joseph
    Borghaei, Hossein
    PHARMACOGENOMICS & PERSONALIZED MEDICINE, 2012, 5 : 113 - 123
  • [24] Radiomics in predicting treatment response in non-small-cell lung cancer: current status, challenges and future perspectives
    Chetan, Madhurima R.
    Gleeson, Fergus V.
    EUROPEAN RADIOLOGY, 2021, 31 (02) : 1049 - 1058
  • [25] A CT-Based Radiomics Approach to Predict Nivolumab Response in Advanced Non-Small-Cell Lung Cancer
    Liu, Chang
    Gong, Jing
    Yu, Hui
    Liu, Quan
    Wang, Shengping
    Wang, Jialei
    FRONTIERS IN ONCOLOGY, 2021, 11
  • [26] Radiomics and Delta-Radiomics Signatures to Predict Response and Survival in Patients with Non-Small-Cell Lung Cancer Treated with Immune Checkpoint Inhibitors
    Cousin, Francois
    Louis, Thomas
    Dheur, Sophie
    Aboubakar, Frank
    Ghaye, Benoit
    Occhipinti, Mariaelena
    Vos, Wim
    Bottari, Fabio
    Paulus, Astrid
    Sibille, Anne
    Vaillant, Frederique
    Duysinx, Bernard
    Guiot, Julien
    Hustinx, Roland
    CANCERS, 2023, 15 (07)
  • [27] Research on circadian clock genes in non-small-cell lung carcinoma
    Qiu, Mengjun
    Chen, Yao-bing
    Jin, Si
    Fang, Xie-fan
    He, Xiao-xiao
    Xiong, Zhi-fan
    Yang, Sheng-li
    CHRONOBIOLOGY INTERNATIONAL, 2019, 36 (06) : 739 - 750
  • [28] Robustness of Radiomics in Pre-Surgical Computer Tomography of Non-Small-Cell Lung Cancer
    Belfiore, Maria Paola
    Sansone, Mario
    Monti, Riccardo
    Marrone, Stefano
    Fusco, Roberta
    Nardone, Valerio
    Grassi, Roberto
    Reginelli, Alfonso
    JOURNAL OF PERSONALIZED MEDICINE, 2023, 13 (01):
  • [29] RET Inhibitors in Non-Small-Cell Lung Cancer
    Cascetta, Priscilla
    Sforza, Vincenzo
    Manzo, Anna
    Carillio, Guido
    Palumbo, Giuliano
    Esposito, Giovanna
    Montanino, Agnese
    Costanzo, Raffaele
    Sandomenico, Claudia
    De Cecio, Rossella
    Piccirillo, Maria Carmela
    La Manna, Carmine
    Totaro, Giuseppe
    Muto, Paolo
    Picone, Carmine
    Bianco, Roberto
    Normanno, Nicola
    Morabito, Alessandro
    CANCERS, 2021, 13 (17)
  • [30] Delta radiomics model for the prediction of progression-free survival time in advanced non-small-cell lung cancer patients after immunotherapy
    Xie, Dong
    Xu, Fangyi
    Zhu, Wenchao
    Pu, Cailing
    Huang, Shaoyu
    Lou, Kaihua
    Wu, Yan
    Huang, Dingpin
    He, Cong
    Hu, Hongjie
    FRONTIERS IN ONCOLOGY, 2022, 12