Exploring the potential of multiomics liquid biopsy testing in the clinical setting of lung cancer.
Andrea GottardoTancredi Didier Bazan RussoAlessandro PerezMarco BonoEmilia Di GiovanniEnrico Di MarcoRita SiinoCarla Ferrante BanneraClarissa MujacicMaria Concetta VitaleSilvia ContinoGiuliana IannìGiulia BusuitoFederica IaconoLorena IncorvaiaGiuseppe BadalamentiAntonio GalvanoAntonio RussoViviana BazanValerio GristinaPublished in: Cytopathology : official journal of the British Society for Clinical Cytology (2024)
The transformative role of artificial intelligence (AI) and multiomics could enhance the diagnostic and prognostic capabilities of liquid biopsy (LB) for lung cancer (LC). Despite advances, the transition from tissue biopsies to more sophisticated, non-invasive methods like LB has been impeded by challenges such as the heterogeneity of biomarkers and the low concentration of tumour-related analytes. The advent of multiomics - enabled by deep learning algorithms - offers a solution by allowing the simultaneous analysis of various analytes across multiple biological fluids, presenting a paradigm shift in cancer diagnostics. Through multi-marker, multi-analyte and multi-source approaches, this review showcases how AI and multiomics are identifying clinically valuable biomarker combinations that correlate with patients' health statuses. However, the path towards clinical implementation is fraught with challenges, including study reproducibility and lack of methodological standardization, thus necessitating urgent solutions to solve these common issues.
Keyphrases
- artificial intelligence
- deep learning
- machine learning
- big data
- ultrasound guided
- end stage renal disease
- healthcare
- convolutional neural network
- newly diagnosed
- chronic kidney disease
- ejection fraction
- ionic liquid
- primary care
- prognostic factors
- fine needle aspiration
- mental health
- public health
- squamous cell carcinoma
- peritoneal dialysis
- single cell
- case report
- patient reported outcomes
- risk assessment
- human health
- young adults
- social media
- health information
- solid state
- childhood cancer
- patient reported