Combining Low-Dose Computer-Tomography-Based Radiomics and Serum Metabolomics for Diagnosis of Malignant Nodules in Participants of Lung Cancer Screening Studies
Joanna Zyla,
Michal Marczyk,
Wojciech Prazuch,
Magdalena Sitkiewicz,
Agata Durawa,
Malgorzata Jelitto,
Katarzyna Dziadziuszko,
Karol Jelonek,
Agata Kurczyk,
Edyta Szurowska,
Witold Rzyman,
Piotr Widłak,
Joanna Polanska
Affiliations
Joanna Zyla
Department of Data Science and Engineering, Silesian University of Technology, 44-100 Gliwice, Poland
Michal Marczyk
Department of Data Science and Engineering, Silesian University of Technology, 44-100 Gliwice, Poland
Wojciech Prazuch
Department of Data Science and Engineering, Silesian University of Technology, 44-100 Gliwice, Poland
Magdalena Sitkiewicz
Department of Thoracic Surgery, Medical University of Gdansk, 80-210 Gdansk, Poland
Agata Durawa
Department of Thoracic Surgery, Medical University of Gdansk, 80-210 Gdansk, Poland
Malgorzata Jelitto
2nd Department of Radiology, Medical University of Gdansk, 80-210 Gdansk, Poland
Katarzyna Dziadziuszko
2nd Department of Radiology, Medical University of Gdansk, 80-210 Gdansk, Poland
Karol Jelonek
Center for Translational Research and Molecular Biology of Cancer, Maria Sklodowska-Curie National Research Institute of Oncology, Gliwice Branch, 44-100 Gliwice, Poland
Agata Kurczyk
Department of Biostatistics and Bioinformatics, Maria Sklodowska-Curie National Research Institute of Oncology, Gliwice Branch, 44-100 Gliwice, Poland
Edyta Szurowska
2nd Department of Radiology, Medical University of Gdansk, 80-210 Gdansk, Poland
Witold Rzyman
Department of Thoracic Surgery, Medical University of Gdansk, 80-210 Gdansk, Poland
Piotr Widłak
2nd Department of Radiology, Medical University of Gdansk, 80-210 Gdansk, Poland
Joanna Polanska
Department of Data Science and Engineering, Silesian University of Technology, 44-100 Gliwice, Poland
Radiomics is an emerging approach to support the diagnosis of pulmonary nodules detected via low-dose computed tomography lung cancer screening. Serum metabolome is a promising source of auxiliary biomarkers that could help enhance the precision of lung cancer diagnosis in CT-based screening. Thus, we aimed to verify whether the combination of these two techniques, which provides local/morphological and systemic/molecular features of disease at the same time, increases the performance of lung cancer classification models. The collected cohort consists of 1086 patients with radiomic and 246 patients with serum metabolomic evaluations. Different machine learning techniques, i.e., random forest and logistic regression were applied for each omics. Next, model predictions were combined with various integration methods to create a final model. The best single omics models were characterized by an AUC of 83% in radiomics and 60% in serum metabolomics. The model integration only slightly increased the performance of the combined model (AUC equal to 85%), which was not statistically significant. We concluded that radiomics itself has a good ability to discriminate lung cancer from benign lesions. However, additional research is needed to test whether its combination with other molecular assessments would further improve the diagnosis of screening-detected lung nodules.