» Articles » PMID: 37995708

Methodological Evaluation of Original Articles on Radiomics and Machine Learning for Outcome Prediction Based on Positron Emission Tomography (PET)

Overview
Journal Nuklearmedizin
Publisher Thieme
Specialty Nuclear Medicine
Date 2023 Nov 23
PMID 37995708
Authors
Affiliations
Soon will be listed here.
Abstract

Aim: Despite a vast number of articles on radiomics and machine learning in positron emission tomography (PET) imaging, clinical applicability remains limited, partly owing to poor methodological quality. We therefore systematically investigated the methodology described in publications on radiomics and machine learning for PET-based outcome prediction.

Methods: A systematic search for original articles was run on PubMed. All articles were rated according to 17 criteria proposed by the authors. Criteria with >2 rating categories were binarized into "adequate" or "inadequate". The association between the number of "adequate" criteria per article and the date of publication was examined.

Results: One hundred articles were identified (published between 07/2017 and 09/2023). The median proportion of articles per criterion that were rated "adequate" was 65% (range: 23-98%). Nineteen articles (19%) mentioned neither a test cohort nor cross-validation to separate training from testing. The median number of criteria with an "adequate" rating per article was 12.5 out of 17 (range, 4-17), and this did not increase with later dates of publication (Spearman's rho, 0.094; p = 0.35). In 22 articles (22%), less than half of the items were rated "adequate". Only 8% of articles published the source code, and 10% made the dataset openly available.

Conclusion: Among the articles investigated, methodological weaknesses have been identified, and the degree of compliance with recommendations on methodological quality and reporting shows potential for improvement. Better adherence to established guidelines could increase the clinical significance of radiomics and machine learning for PET-based outcome prediction and finally lead to the widespread use in routine clinical practice.

Citing Articles

PET radiomics in lung cancer: advances and translational challenges.

Zhang Y, Huang W, Jiao H, Kang L EJNMMI Phys. 2024; 11(1):81.

PMID: 39361110 PMC: 11450131. DOI: 10.1186/s40658-024-00685-5.

References
1.
Lv W, Zhou Z, Peng J, Peng L, Lin G, Wu H . Functional-structural sub-region graph convolutional network (FSGCN): Application to the prognosis of head and neck cancer with PET/CT imaging. Comput Methods Programs Biomed. 2023; 230:107341. DOI: 10.1016/j.cmpb.2023.107341. View

2.
Frood R, Clark M, Burton C, Tsoumpas C, Frangi A, Gleeson F . Discovery of Pre-Treatment FDG PET/CT-Derived Radiomics-Based Models for Predicting Outcome in Diffuse Large B-Cell Lymphoma. Cancers (Basel). 2022; 14(7). PMC: 8997127. DOI: 10.3390/cancers14071711. View

3.
Collins G, Reitsma J, Altman D, Moons K . Transparent reporting of a multivariable prediction model for individual prognosis or diagnosis (TRIPOD): the TRIPOD statement. BMJ. 2015; 350:g7594. DOI: 10.1136/bmj.g7594. View

4.
Wang C, Liu C, Chang Y, Lafata K, Cui Y, Zhang J . Dose-Distribution-Driven PET Image-Based Outcome Prediction (DDD-PIOP): A Deep Learning Study for Oropharyngeal Cancer IMRT Application. Front Oncol. 2020; 10:1592. PMC: 7461989. DOI: 10.3389/fonc.2020.01592. View

5.
Kustner T, Vogel J, Hepp T, Forschner A, Pfannenberg C, Schmidt H . Development of a Hybrid-Imaging-Based Prognostic Index for Metastasized-Melanoma Patients in Whole-Body 18F-FDG PET/CT and PET/MRI Data. Diagnostics (Basel). 2022; 12(9). PMC: 9498091. DOI: 10.3390/diagnostics12092102. View