A powerful machine learning approach to identify interactions of differentially abundant gut microbial subsets in patients with metastatic and non-metastatic pancreatic cancer.
Annacandida VillaniAndrea FontanaConcetta PanebiancoCarmelapia FerroMassimiliano CopettiRadmila PavlovicDenise DragoCarla FiorentiniFulvia TerraccianoFrancesca BazzocchiGiuseppe CanistroFederica PisatiEvaristo MaielloTiziana Pia LatianoFrancesco PerriValerio PazienzaPublished in: Gut microbes (2024)
Pancreatic cancer has a dismal prognosis, as it is often diagnosed at stage IV of the disease and is characterized by metastatic spread. Gut microbiota and its metabolites have been suggested to influence the metastatic spread by modulating the host immune system or by promoting angiogenesis. To date, the gut microbial profiles of metastatic and non-metastatic patients need to be explored. Taking advantage of the 16S metagenomic sequencing and the PEnalized LOgistic Regression Analysis (PELORA) we identified clusters of bacteria with differential abundances between metastatic and non-metastatic patients. An overall increase in Gram-negative bacteria in metastatic patients compared to non-metastatic ones was identified using this method. Furthermore, to gain more insight into how gut microbes can predict metastases, a machine learning approach (iterative Random Forest) was performed. Iterative Random Forest analysis revealed which microorganisms were characterized by a different level of relative abundance between metastatic and non-metastatic patients and established a functional relationship between the relative abundance and the probability of having metastases. At the species level, the following bacteria were found to have the highest discriminatory power: Anaerostipes hadrus , Coprobacter secundus , Clostridium sp. 619, Roseburia inulinivorans , Porphyromonas and Odoribacter at the genus level, and Rhodospirillaceae , Clostridiaceae and Peptococcaceae at the family level. Finally, these data were intertwined with those from a metabolomics analysis on fecal samples of patients with or without metastasis to better understand the role of gut microbiota in the metastatic process. Artificial intelligence has been applied in different areas of the medical field. Translating its application in the field of gut microbiota analysis may help fully exploit the potential information contained in such a large amount of data aiming to open up new supportive areas of intervention in the management of cancer.
Keyphrases
- squamous cell carcinoma
- small cell lung cancer
- end stage renal disease
- machine learning
- artificial intelligence
- newly diagnosed
- ejection fraction
- chronic kidney disease
- peritoneal dialysis
- big data
- randomized controlled trial
- healthcare
- climate change
- mass spectrometry
- signaling pathway
- deep learning
- magnetic resonance imaging
- patient reported outcomes
- computed tomography
- ms ms
- minimally invasive
- wastewater treatment
- image quality