Multi-omics staging of locally advanced rectal cancer predicts treatment response: a pilot study.
Ilaria CicaliniAntonio Maria ChiarelliPiero ChiacchiarettaDavid PerpetuiniConsuelo RosaDomenico MastrodicasaMartina d'AnnibaleStefano TrebeschiFrancesco Lorenzo SerafiniGiulio CoccoMarco NarcisoAntonio CorvinoSebastiano CinalliDomenico GenovesiPaola LanutiSilvia ValentinuzziDamiana PieragostinoDavide BroccoRegina G H Beets-TanNicola TinariStefano L SensiLiborio StuppiaPiero Del BoccioMassimo CauloAndrea Delli PizziPublished in: La Radiologia medica (2024)
Treatment response assessment of rectal cancer patients is a critical component of personalized cancer care and it allows to identify suitable candidates for organ-preserving strategies. This pilot study employed a novel multi-omics approach combining MRI-based radiomic features and untargeted metabolomics to infer treatment response at staging. The metabolic signature highlighted how tumor cell viability is predictively down-regulated, while the response to oxidative stress was up-regulated in responder patients, showing significantly reduced oxoproline values at baseline compared to non-responder patients (p-value < 10 -4 ). Tumors with a high degree of texture homogeneity, as assessed by radiomics, were more likely to achieve a major pathological response (p-value < 10 -3 ). A machine learning classifier was implemented to summarize the multi-omics information and discriminate responders and non-responders. Combining all available radiomic and metabolomic features, the classifier delivered an AUC of 0.864 (± 0.083, p-value < 10 -3 ) with a best-point sensitivity of 90.9% and a specificity of 81.8%. Our results suggest that a multi-omics approach, integrating radiomics and metabolomic data, can enhance the predictive value of standard MRI and could help to avoid unnecessary surgical treatments and their associated long-term complications.
Keyphrases
- rectal cancer
- end stage renal disease
- machine learning
- newly diagnosed
- oxidative stress
- chronic kidney disease
- contrast enhanced
- magnetic resonance imaging
- squamous cell carcinoma
- healthcare
- mass spectrometry
- magnetic resonance
- dna damage
- artificial intelligence
- radiation therapy
- patient reported outcomes
- lymph node metastasis
- pet ct
- computed tomography
- electronic health record
- signaling pathway
- ischemia reperfusion injury
- simultaneous determination