Colorectal cancer (CRC) once predominantly affected older individuals, but in recent years has witnessed a progressive increase in incidence among young adults. Once rare, early-onset colorectal cancer (EOCRC, that is, a CRC diagnosed before the age of 50) now constitutes 10-15% of all newly diagnosed CRC cases and it stands as the first cause of cancer-related death in young men and the second for young women. This study aims to detect EOCRC with a non-invasive test, using a blood-based molecular assay based on microRNA (ribonucleic acid)
The rising incidence of early-onset colorectal cancer (EOCRC) is a pressing clinical issue unique to our times, and it is expected to grow with an anticipated further 90% increase in incidence by the decade's end. Challenges persist even after reducing the CRC screening age to 45: under-45s lack routine screening and compliance in the 45-50 age group remains low, partly due to invasiveness and discomfort of standard screening methods. Urgent action is warranted to develop affordable, sensitive, and feasible screening for timely detection and improved participation. A non-invasive, patient-friendly screening test, like a blood-based assay, could address these epidemiological concerns and also attract underserved populations. This study involves the development and validation of a liquid biopsy, assessing circulating cell-free and exosomal microRNAs (cf-miRNA and exo-miRNA, respectively) for indirect sampling of tumor tissue in the bloodstream. The researchers intend to harness machine learning and bioinformatics to create an integrated panel (with both cf-miRNAs and exo-miRNAs) to enhance the inherently high sensitivity of cf-miRNAs with the distinctive specificity of exo-miRNAs. This combined approach will not only improve the performance of a diagnostic model but will also tap into the diverse tumor biology aspects of EOCRC. The study's core goal is to develop cost-efficient, non-invasive, clinic-friendly biomarkers with high sensitivity and specificity, aiding EOCRC detection. The researchers intend to do so in three phases: 1. To perform comprehensive small RNA-Seq from matched cf-miRNA, exo-miRNA, cancer-derived miRNA, and mucosa-derived miRNA. 2. To develop and train two miRNA detection panels (cf-miRNA and exo-miRNA, respectively) based on advanced machine-learning models and, then, combine these two using several machine-learning models to obtain a final detection biomarker. 3. To validate the findings in an independent cohort of EOCRC and controls. In summary, this proposal promises to improve patient care and compliance, and, ultimately, reduce mortality from EOCRC.
Study Type
OBSERVATIONAL
Enrollment
400
A panel of microRNA, both cell-free and exosomes, whose expression level is tested from plasma samples from patients with early onset colorectal cancer and non-disease controls.
City of Hope Medical Center
Duarte, California, United States
RECRUITINGIRCCS San Raffaele
Milan, Italy
RECRUITINGKawasaki University
Kawasaki, Japan
RECRUITINGMie University
Mie, Japan
RECRUITINGNational Cancer Center Hospital
Tokyo, Japan
RECRUITINGTokyo Medical and Dental University
Tokyo, Japan
RECRUITINGYamagata University
Yamagata, Japan
RECRUITINGBarcelona University
Barcelona, Spain
RECRUITINGColorectal Surgery, Vall d'Hebron University Hospital, Universitat Autonoma de Barcelona UAB
Barcelona, Spain
RECRUITINGSurgery Department, Hospital del Mar, Barcelona, Spain
Barcelona, Spain
RECRUITING...and 3 more locations
Sensitivity
True Positive Rate: the probability of a positive test result, conditioned on the individual truly being positive
Time frame: Through study completion, an average of 1 year
Specificity
True Negative Rate: the probability of a negative test result, conditioned on the individual truly being negative
Time frame: Through study completion, an average of 1 year
Proportion of correct predictions (true positives and true negatives) among the total cases (i.e., accuracy)
A measure of trueness: proportion of correct predictions (both true positives and true negatives) among the total number of cases examined
Time frame: Through study completion, an average of 1 year
This platform is for informational purposes only and does not constitute medical advice. Always consult a qualified healthcare professional.