Robust Multicenter CT Radiogenomics for Dual EGFR and KRAS Prediction in Lung Cancer with Stability-Aware Modeling and SHAP Interpretation
Pith reviewed 2026-05-15 00:33 UTC · model grok-4.3
The pith
Handcrafted radiomics features from CT scans predict EGFR and KRAS mutations in lung cancer more reliably across centers than deep features.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
Standardized handcrafted radiomics features within a multicenter semi-supervised framework provide a generalizable and interpretable approach for CT-based EGFR/KRAS stratification, as shown by superior external validation performance over deep feature representations.
What carries the argument
IBSI-compliant handcrafted radiomics features extracted after standardized preprocessing and deployed in stability-aware modeling for three-class mutation classification.
If this is right
- HRF models maintain performance when moving from cross-validation to external multicenter testing while DFR models degrade.
- SHAP analysis consistently identifies morphology- and heterogeneity-related radiomic phenotypes as the strongest predictors.
- Fusion of HRF and DFR improves robustness over DFR alone but does not consistently exceed HRF performance.
- Semi-supervised pseudo-labeling on unlabeled CT scans enables effective training when labeled mutation data remain scarce.
Where Pith is reading between the lines
- If the HRF pipeline holds up in prospective trials it could serve as an initial noninvasive screen to triage patients away from immediate biopsy.
- The same stability-aware extraction and modeling steps could be reused for other genetic markers or solid-tumor types where multicenter CT data exist.
- The observed advantage of handcrafted over learned features suggests that explicit shape and texture descriptors may capture mutation-linked biology more stably than end-to-end networks on modest labeled sets.
Load-bearing premise
The 136 labeled patients drawn from 12 public datasets represent real-world tumor heterogeneity and semi-supervised pseudo-labeling adds no systematic bias to the unlabeled scans.
What would settle it
Apply the identical HRF pipeline to an independent multicenter cohort with fresh ground-truth mutation labels and check whether external AUC remains near 0.77 or falls substantially below it.
Figures
read the original abstract
Accurate identification of EGFR and KRAS mutations is essential for precision therapy in non-small cell lung cancer (NSCLC), but tissue genotyping is invasive and may not capture tumor heterogeneity. CT-based radiogenomics offers a noninvasive alternative, although generalization across centers remains challenging. We benchmarked handcrafted radiomics features (HRF), deep feature representations (DFR), and their fusion for three-class mutation prediction (wild-type, KRAS-mutant, and EGFR-mutant) with external testing. We curated 1,023 thoracic CT scans from 12 public datasets across more than 20 centers, including 136 patients with EGFR/KRAS labels. IBSI-compliant HRFs were extracted with standardized preprocessing, and DFRs were derived using PySERA. HRF-only, DFR-only, and fused HRF+DFR pipelines were evaluated using five-fold cross-validation and external testing. A semi-supervised pseudo-labeling strategy leveraged unlabeled CT scans, and SHAP supported interpretability. In external testing, HRF-based models generalized best, achieving AUC 0.77 +/- 0.07 and accuracy 0.77 +/- 0.00. DFR-based models showed a larger drop from cross-validation to external testing, with best external AUC around 0.57 +/- 0.05. Fusion improved robustness over DFR-only models but did not consistently outperform HRFs. SHAP identified morphology- and heterogeneity-related radiomic phenotypes as key predictors. Standardized handcrafted radiomics within a multicenter semi-supervised framework may provide a generalizable and interpretable approach for CT-based EGFR/KRAS stratification.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The manuscript benchmarks handcrafted radiomics features (HRF), deep feature representations (DFR), and their fusion for three-class prediction of EGFR/KRAS/wild-type status in NSCLC from 1,023 CT scans across 12 public datasets (>20 centers). Using 136 labeled cases and semi-supervised pseudo-labeling on the remaining ~887 scans, the authors report five-fold CV plus external testing, with HRF models achieving the best external performance (AUC 0.77 ± 0.07, accuracy 0.77 ± 0.00). SHAP is used for interpretability, and IBSI-compliant preprocessing is emphasized.
Significance. If the external generalization claim survives scrutiny of the pseudo-labeling step, the work would strengthen the case for standardized, interpretable CT radiogenomics as a noninvasive alternative to tissue genotyping. The multicenter scale, explicit comparison of feature families, and use of SHAP are positive elements. However, the small labeled cohort (136 patients) and dependence on pseudo-labels limit the strength of the robustness conclusion relative to prior single-center radiomics studies.
major comments (3)
- [Methods (semi-supervised pipeline)] Methods section on semi-supervised pseudo-labeling: the threshold, iteration count, and any quality check against the 136 ground-truth labels are not specified. Because the headline external AUC of 0.77 is obtained only after training on the pseudo-labeled pool, an ablation that reports performance when the model is trained solely on the 136 labeled cases is required to demonstrate that pseudo-labeling does not inject center-correlated label noise.
- [Results (external testing)] Results, external-testing paragraph and associated table: class prevalence in the external test set is not stated, nor is any strategy for three-class imbalance (e.g., class weights, oversampling). The reported accuracy of 0.77 ± 0.00 with zero variance is difficult to interpret without this information and raises the possibility that the metric is dominated by the majority class.
- [Results (model comparison)] Results, model-comparison subsection: no statistical test (e.g., DeLong or bootstrap) is reported for the difference between HRF external AUC (0.77) and DFR external AUC (~0.57). Without this, the claim that “HRF-based models generalized best” rests on point estimates whose uncertainty overlaps.
minor comments (3)
- [Abstract] Abstract: the notation “accuracy 0.77 +/- 0.00” should be clarified; if it reflects a single external partition, state the test-set size explicitly.
- [Methods] Methods: list the exact hyperparameter search ranges and final values for all ML models (random forest, etc.), as these are free parameters that affect reproducibility.
- [Figures] Figure legends: SHAP summary plots should label the top features by their radiomic name (e.g., “GLCM_Entropy”) rather than generic indices.
Simulated Author's Rebuttal
We thank the referee for the constructive and detailed comments. We address each major point below and have revised the manuscript to improve transparency, add requested analyses, and strengthen the statistical support for our claims.
read point-by-point responses
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Referee: Methods section on semi-supervised pseudo-labeling: the threshold, iteration count, and any quality check against the 136 ground-truth labels are not specified. Because the headline external AUC of 0.77 is obtained only after training on the pseudo-labeled pool, an ablation that reports performance when the model is trained solely on the 136 labeled cases is required to demonstrate that pseudo-labeling does not inject center-correlated label noise.
Authors: We agree that greater detail on the semi-supervised procedure is needed for reproducibility. In the revised Methods section we now specify the pseudo-labeling threshold, iteration count, and quality-control steps performed against the ground-truth labels. We have also added the requested ablation study comparing models trained only on the 136 labeled cases versus the full pseudo-labeled set; the new results confirm that the semi-supervised step improves external performance without evidence of center-correlated label noise. revision: yes
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Referee: Results, external-testing paragraph and associated table: class prevalence in the external test set is not stated, nor is any strategy for three-class imbalance (e.g., class weights, oversampling). The reported accuracy of 0.77 ± 0.00 with zero variance is difficult to interpret without this information and raises the possibility that the metric is dominated by the majority class.
Authors: We acknowledge that class prevalence and imbalance handling should have been stated explicitly. The revised Results section now reports the class distribution in the external test set and describes the class-weighted loss used to address three-class imbalance. We have also clarified the accuracy metric by reporting its variance across the evaluation folds to facilitate interpretation. revision: yes
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Referee: Results, model-comparison subsection: no statistical test (e.g., DeLong or bootstrap) is reported for the difference between HRF external AUC (0.77) and DFR external AUC (~0.57). Without this, the claim that “HRF-based models generalized best” rests on point estimates whose uncertainty overlaps.
Authors: We agree that a formal statistical comparison is required to support the model ranking. In the revised Results we have added a DeLong test comparing the external AUCs of the HRF and DFR models; the test establishes a statistically significant difference, thereby strengthening the claim that HRF-based models generalized best. revision: yes
Circularity Check
No circularity in reported performance metrics or modeling pipeline
full rationale
The paper reports empirical results from five-fold cross-validation and external testing on independent multicenter data (1,023 scans from 12 public datasets). No equations, derivations, or modeling steps are shown that reduce the reported AUC/accuracy to fitted parameters defined on the same test set by construction. The semi-supervised pseudo-labeling is applied only to unlabeled scans, with final metrics evaluated on held-out external data preserving independence. No self-citations, ansatzes, or uniqueness theorems are invoked in a load-bearing way within the provided text. The derivation chain is self-contained against external benchmarks.
Axiom & Free-Parameter Ledger
free parameters (2)
- ML model hyperparameters
- pseudo-labeling threshold
axioms (1)
- domain assumption Radiomic features extracted from CT can serve as proxies for EGFR and KRAS mutation status
Lean theorems connected to this paper
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IndisputableMonolith/Cost/FunctionalEquation.leanwashburn_uniqueness_aczel unclear?
unclearRelation between the paper passage and the cited Recognition theorem.
HRF-based models generalized best, achieving AUC 0.77 +/- 0.07... semi-supervised pseudo-labeling strategy leveraged unlabeled CT scans... stability-aware modeling... composite score... SHAP
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IndisputableMonolith/Foundation/AlphaCoordinateFixation.leanalpha_pin_under_high_calibration unclear?
unclearRelation between the paper passage and the cited Recognition theorem.
stability... normalized SD transformed as Stability_i = 1 - Ŝ_i... Final Composite Score
What do these tags mean?
- matches
- The paper's claim is directly supported by a theorem in the formal canon.
- supports
- The theorem supports part of the paper's argument, but the paper may add assumptions or extra steps.
- extends
- The paper goes beyond the formal theorem; the theorem is a base layer rather than the whole result.
- uses
- The paper appears to rely on the theorem as machinery.
- contradicts
- The paper's claim conflicts with a theorem or certificate in the canon.
- unclear
- Pith found a possible connection, but the passage is too broad, indirect, or ambiguous to say the theorem truly supports the claim.
Reference graph
Works this paper leans on
-
[1]
Rebecca L. Siegel, T.B.K., Angela N. Giaquinto M, Hyuna Sung, Ahmedin Jemal DVM,, Cancer statistics, 2025. CA Cancer J Clin, 2025. 75(1): p. 10-45
work page 2025
-
[2]
Rizzo S, P.F., Buscarino V, De Maria F, Raimondi S, Barberis M, et al, CT radiogenomic characterization of EGFR, K - RAS, and ALK mutations in non-small cell lung cancer. European radiology, 2016. 26(1): p. 32-42
work page 2016
-
[3]
Shaban N, K.D., Emelianova A, Buzdin A, Targeted inhibitors of EGFR: structure, biology, biomarkers, and clinical applications. Cells, 2023. 13(1): p. 47
work page 2023
-
[4]
Pan W, Y.Y., Zhu H, Zhang Y, Zhou R, Sun X. , KRAS mutation is a weak, but valid predictor for poor prognosis and treatment outcomes in NSCLC: A meta-analysis of 41 studies. Oncotarget, 2016. 7(7): p. 8373
work page 2016
-
[5]
, Literature review of advances and challenges in KRAS G12C mutant non-small cell lung cancer
Yuan J-X, H.Y., Dai X-Z, Hong J-J, Chen C-Y, Huo Z-X, et al. , Literature review of advances and challenges in KRAS G12C mutant non-small cell lung cancer. Translational Lung Cancer Research, 2025. 14(7): p. 2799
work page 2025
-
[6]
Chaddha U, A.A., Ghori U, Kheir F, Debiane L, McWilliams A, et al. , Safety and Sample Adequacy for Comprehensive Biomarker Testing of Bronchoscopic Biopsies: An American Association of Bronchology and Interventional Pulmonology 13 (AABIP) and International Association for the Study of Lung Cancer (IASLC) Clinical Practice Guideline. Journal of Thoracic O...
work page 2025
-
[7]
Ma N, Y.W., Wang Q, Cui C, Hu Y, Wu Z. . Predictive value of 18F -FDG PET/CT radiomics for EGFR mutation status in non-small cell lung cancer: a systematic review and meta-analysis. Frontiers in Oncology, 2024. 14: p. 1281572
work page 2024
-
[8]
Li Y, L.J., Wang Y, Wang Y, Huang D, Wen Z, et al. , Construction of a radiogenomics predictive model for KRAS mutation status in patients with non-small cell lung cancer. . Journal of Thoracic Disease., 2025. 17(6): p. 3749
work page 2025
-
[9]
, Decoding tumour phenotype by noninvasive imaging using a quantitative radiomics approach
Aerts HJ, V.E., Leijenaar RT, Parmar C, Grossmann P, Carvalho S, et al. , Decoding tumour phenotype by noninvasive imaging using a quantitative radiomics approach. Nature communications, 2014. 5(1): p. 4006
work page 2014
-
[10]
Physics in Medicine & Biology, 2016
Yip SS, A.H., Applications and limitations of radiomics. Physics in Medicine & Biology, 2016. 61(13): p. R150
work page 2016
-
[11]
-F., Li X -Y, Yu W, Xu Z -Y, Cai X -W, et al
Jia T-Y, X.J. -F., Li X -Y, Yu W, Xu Z -Y, Cai X -W, et al. , Identifying EGFR mutations in lung adenocarcinoma by noninvasive imaging using radiomics features and random forest modeling. European radiology, 2019. 29(9): p. 4742-50
work page 2019
-
[12]
Molecular Imaging and Biology, 2020
Shiri S, M.H., Hajianfar Gh, Abdollahi H, Ashrafinia S, Hatt M, Zaidi H, Oveisi M, and Rahmim A, Next -generation radiogenomics sequencing for prediction of EGFR and KRAS mutation status in NSCLC patients using multimodal imaging and machine learning algorithms. Molecular Imaging and Biology, 2020. 22(4): p. 1132-48
work page 2020
-
[13]
Computers in biology and medicine, 2022
Shiri I, A.M., Nazari M, Hajianfar Gh, Avval A H, Abdollahi H, Oveisi M, Arabi H, Rahmim A, Zaidi H, Impact of feature harmonization on radiogenomics analysis: Prediction of EGFR and KRAS mutations from non -small cell lung cancer PET/CT images. Computers in biology and medicine, 2022. 142: p. 105230
work page 2022
-
[14]
, Somatic mutations drive distinct imaging phenotypes in lung cancer
Rios Velazquez E, P.C., Liu Y, Coroller TP, Cruz G, Stringfield O, et al. , Somatic mutations drive distinct imaging phenotypes in lung cancer. Cancer research, 2017. 77(14): p. 3922-30
work page 2017
-
[15]
, Predictive radiogenomics modeling of EGFR mutation status in lung cancer
Gevaert O, E.S., Khuong A, Hoang CD, Shrager JB, Jensen KC, et al. , Predictive radiogenomics modeling of EGFR mutation status in lung cancer. Scientific reports, 2017. 7(1): p. 41674
work page 2017
-
[16]
Korean journal of radiology 2019
Park J E, P.S.Y., Kim H J, and Kim H S., Reproducibility and generalizability in radiomics modeling: possible strategies in radiologic and statistical perspectives. Korean journal of radiology 2019. 20(7): p. 1124-1137
work page 2019
-
[17]
Radiology: Artificial Intelligence 2024
Horvat N, P.N., and Koh D-M, Radiomics beyond the hype: a critical evaluation toward oncologic clinical use. Radiology: Artificial Intelligence 2024. 6(4): p. e230437
work page 2024
-
[18]
, A postreconstruction harmonization method for multicenter radiomic studies in PET
Orlhac F, B.S., Philippe C, Stalla-Bourdillon H, Nioche C, Champion L, et al. , A postreconstruction harmonization method for multicenter radiomic studies in PET. Journal of Nuclear Medicine, 2018. 59(8): p. 1321-8
work page 2018
-
[19]
Zwanenburg A, V.M., Abdalah MA, Aerts HJ, Andrearczyk V, Apte A, et al. , The image biomarker standardization initiative: standardized quantitative radiomics for high-throughput image-based phenotyping. Radiology, 2020. 295(2): p. 328-38
work page 2020
-
[20]
Felfli, M., Liu Y, Zerka F, Voyton Ch, Thinnes A, Jacques S, Iannessi A, et al. , Systematic review, meta -analysis and radiomics quality score assessment of CT radiomics-based models predicting tumor EGFR mutation status in patients with non-small-cell lung cancer. International journal of molecular sciences, 2023. 24(14): p. 11433
work page 2023
-
[21]
Dong Y, H.L., Yang W, Han J, Wang J, Qiang Y, Zhao J et al. , Multi -channel multi-task deep learning for predicting EGFR and KRAS mutations of non-small cell lung cancer on CT images. Quantitative imaging in medicine and surgery,
-
[22]
Journal of Cancer Research and Clinical Oncology
Zuo Y, L.Q., Li N, Li P, Fang Y, Bian L, Zhang J, Song S, Explainable 18F-FDG PET/CT radiomics model for predicting EGFR mutation status in lung adenocarcinoma: a two -center study. Journal of Cancer Research and Clinical Oncology
-
[23]
K, N.N., Kennedy E B, Biermann W A, Donington J, Leighl N B, Lew M et al
Gregory P. K, N.N., Kennedy E B, Biermann W A, Donington J, Leighl N B, Lew M et al. , Molecular testing guideline for the selection of patients with lung cancer for treatment with targeted tyrosine kinase inhibitors: American Society of Clinical Oncology Endorsement of the College of American Pathologists/International Association for the Study of Lung C...
work page 2018
-
[24]
González C, P.J., Riess J W, Gómez-Gómez M P,Clavijo Cabezas D,Vargas M P et al. , Actionable mutations and targeted therapy in non -small cell lung cancer among Latin American and Hispanic patients: a systematic literature review of prognosis and meta-analysis. Translational Lung Cancer Research, 2025. 14(9): p. 3410-3429
work page 2025
-
[25]
Diagnostic and Interventional Radiology
D, A., Reproducibility and interpretability in radiomics: a critical assessment. Diagnostic and Interventional Radiology
-
[26]
European Radiology Experimental, 2024
Leonardo R, M.C., Image biomarkers and explainable AI: handcrafted features versus deep learned features. European Radiology Experimental, 2024. 8(1): p. 130
work page 2024
-
[27]
The cancer genome atlas lung adenocarcinoma collection (tcga-luad)
Albertina B, W.M., Holback C, Jarosz R, Kirk S, Lee Y, et al. The cancer genome atlas lung adenocarcinoma collection (tcga-luad). (No Title). 2016., The cancer genome atlas lung adenocarcinoma collection (tcga-luad). 2016
work page 2016
-
[28]
, Data for NSCLC Radiogenomics collection
Bakr S, G.O., Echegaray S, Ayers K, Zhou M, Shafiq M, et al. , Data for NSCLC Radiogenomics collection. . The Cancer Imaging Archive, 2017
work page 2017
-
[29]
, SPIE -AAPM- NCI Lung Nodule Classification Challenge Dataset, in The Cancer Imaging Archive
Armato III, S.L., Tourassi G D, Drukker K, Giger M L, Li, Feng R G, Farahani K, Lirby J S, Clarke LP. , SPIE -AAPM- NCI Lung Nodule Classification Challenge Dataset, in The Cancer Imaging Archive. [Available from: https://doi.org/10.7937/K9/TCIA.2015.UZLSU3FL, T.C.I. Archive., Editor. 2015
-
[30]
Zhao B, S.L.H., Kris M G, Riely G J, Coffee-break lung ct collection with scan images reconstructed at multiple imaging parameters. 2015
work page 2015
-
[31]
The Cancer Imaging Archive (TCIA)
Pilot, R., Lung Image Database Consortium (LIDC). The Cancer Imaging Archive (TCIA). 2023
work page 2023
-
[32]
Goldgof D, H.L., Hawkins S, Schabath M, Stringfield O, Garcia A, et al. , Data from QIN lung CT. 2015
work page 2015
-
[33]
Grove O, B.A., Schabath MB, Aerts HJ, Dekker A, Wang H, et al. Quantitative computed tomographic descriptors associate tumor shape complexity and intratumor heterogeneity with prognosis in lung adenocarcinoma. PloS one. 2015;10(3):e0118261., Quantitative computed tomographic descriptors associate tumor shape complexity and intratumor heterogeneity with pr...
work page 2015
-
[34]
Armato III, S.L., McLennan G, Bidaut L, McNitt‐Gray MF, Meyer CR, Reeves AP, et al. , The lung image database consortium (LIDC) and image database resource initiative (IDRI): a completed reference database of lung nodules on CT scans. . Medical physics, 2011. 38(2): p. 915-31
work page 2011
-
[35]
The Cancer Imaging Archive, 2018
Madabhushi A, R.M., Fused radiology-pathology lung dataset. The Cancer Imaging Archive, 2018
work page 2018
-
[36]
, Data from lung CT segmentation challenge
Yang J, S.G., Veeraraghavan H, Van Elmpt W, Dekker A, Lustberg T, et al. , Data from lung CT segmentation challenge. . The cancer imaging archive, 2017
work page 2017
-
[37]
B. Albertina, M.W., V. Holback, R. Jarosz, S. Kirk, Y. Lee, K. Rieger-Christ and J. Lemmerman, , "The Cancer Genome Atlas Lung Adenocarcinoma Collection (TCGA-LUAD) (Version 4) [Data set]. 2016
work page 2016
-
[38]
Salmanpour, M.R., Pouria A H, Barichin S, Salehi Y, Falahati S, Shiri I, Oveisi M, and Rahmim A. , PySERA: Open - Source Standardized Python Library for Automated, Scalable, and Reproducible Handcrafted and Deep Radiomics. arXiv preprint arXiv:2511.15963, 2025
-
[39]
Du Dongyang, S.I., Yousefirizi F, Salmanpour M R, Lv J, Wu H, Zhu W, Zaidi H, Lu L, Rahmim A Impact of harmonization and oversampling methods on radiomics analysis of multi-center imbalanced datasets: application to PET- based prediction of lung cancer subtypes. EJNMMI physics, 2025. 12(1): p. 34
work page 2025
-
[40]
Salmanpour M R, A.M., Ghazal Mousavi Gh, Sadeghi S, Amiri S, Oveisi M, Rahmim A, d Hacihaliloglu I. , Machine learning evaluation metric discrepancies across programming languages and their components in medical imaging domains: need for standardization. IEEE Access 2025
work page 2025
-
[41]
Alizadeh, M., M. Oveisi, S. Falahati, G. Mousavi, M. A. Meybodi, S. S. Mehrnia, I. Hacihaliloglu, A. Rahmim, and M. R. Salmanpour. , AllMetrics: A Unified Python Library for Standardized Metric Evaluation in Machine Learning. In 2025 IEEE Nuclear Science Symposium (NSS), Medical Imaging Conference (MIC) and Room Temperature Semiconductor Detector Conferen...
work page 2025
-
[42]
, Enhancement Without Contrast: Stability -Aware Multicenter Machine Learning for Glioma MRI Imaging
Amiri S, T.S., Gharibi S, Dehghanfard S, Mehrnia S S, Oveisi M, Hacihaliloglu I, Rahmim A, Salmanpour MR. , Enhancement Without Contrast: Stability -Aware Multicenter Machine Learning for Glioma MRI Imaging. Inventions
-
[43]
Machine Learning and Knowledge Extraction 2024
Ribeiro SM, G.A., Sanchez -Gendriz I, SHapley additive explanations (SHAP) for efficient feature selection in rolling bearing fault diagnosis. Machine Learning and Knowledge Extraction 2024. 6(1): p. 316-341
work page 2024
-
[44]
Fan Y, Y.C., Hu Y, Zhao P, Sun Y, Jiang M, et al. . 2025:, Radiomics based on MRI and 18F -FDG PET/CT predicts response to EGFR -TKI therapy based on primary NSCLC and brain metastasis. Neuro -Oncology Advances, 2025: p. vdaf100
work page 2025
-
[45]
, Radiomic detection of EGFR mutations in NSCLC
Rossi G, B.E., Fedeli A, Ficarra G, Coco S, Russo A, et al. , Radiomic detection of EGFR mutations in NSCLC. Cancer Research, 2021. 81(3): p. 724-731
work page 2021
-
[46]
Tu W, S.G., Fan L, Wang Y, Xia Y, Guan Y, et al. , Radiomics signature: a potential and incremental predictor for EGFR mutation status in NSCLC patients, comparison with CT morphology. Lung Cancer, 2019. 132: p. 28-35
work page 2019
-
[47]
Radiotherapy and Oncology, 2024
Chen J, C.A., Yang S, Liu J, Xie C, Jiang H, Accuracy of machine learning in preoperative identification of genetic mutation status in lung cancer: A systematic review and meta-analysis. Radiotherapy and Oncology, 2024. 196: p. 110325
work page 2024
-
[48]
European Radiology Experimental, 2023
A, D., Are deep models in radiomics performing better than generic models? A systematic review. European Radiology Experimental, 2023. 7(1): p. 11
work page 2023
-
[49]
A, D., Predictive performance of radiomic models based on features extracted from pretrained deep networks. Insights into Imaging, 2022. 13(1): p. 187
work page 2022
-
[50]
Translational Cancer Research, 2018
Vial A, S.D., Field M, Ros M, Ritz C, Carolan M, et al., The role of deep learning and radiomic feature extraction in cancer-specific predictive modelling: a review. Translational Cancer Research, 2018. 7(3)
work page 2018
-
[51]
Emerging topics in life sciences, 2021
P, W., Radiomics, deep learning and early diagnosis in oncology. Emerging topics in life sciences, 2021. 5(6): p. 829-35
work page 2021
-
[52]
Oh G, G.Y., Lee J, Kim H, Wu H-G, Park JM, et al. , Hybrid Approach to Classifying Histological Subtypes of Non-small Cell Lung Cancer (NSCLC): Combining Radiomics and Deep Learning Features from CT Images. Journal of Imaging Informatics in Medicine, 2025: p. 1-13
work page 2025
-
[53]
Kim S, L.J., Kim C -H, Roh J, You S, Choi J -S, et al. , Deep learning –radiomics integrated noninvasive detection of epidermal growth factor receptor mutations in non-small cell lung cancer patients. Scientific Reports, 2024. 14(1): p. 922
work page 2024
-
[54]
A, D., Deep features from pretrained networks do not outperform hand -crafted features in radiomics. Diagnostics 2023. 13(20): p. 3266
work page 2023
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