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Trials / Recruiting

RecruitingNCT07255729

An Exosomal microRNA Signature for Preoperative Staging in Colon Cancer

Machine Learning-Based Exosomal microRNA Signature for Preoperative Staging and Chemotherapy Eligibility in Colon Cancer

Status
Recruiting
Phase
Study type
Observational
Enrollment
400 (estimated)
Sponsor
City of Hope Medical Center · Academic / Other
Sex
All
Age
18 Years
Healthy volunteers
Not accepted

Summary

Recent studies have highlighted the potential benefits of neoadjuvant chemotherapy (NAC) in colon cancer; however, its indication is generally limited to cases corresponding to pathological stage IIB or higher. Accurately identifying such high-risk cases before surgery remains challenging using conventional clinical diagnostics alone. Therefore, we hypothesized that integrating molecular biomarkers with preoperative clinical assessment could provide a more precise and sensitive evaluation of tumor aggressiveness. In this context, we focused on exosomal microRNAs, which are actively secreted from tumor cells and remain stable in circulation, and aimed to develop a machine learning-based biomarker panel. To achieve this, we initiated a multicenter study utilizing preoperative plasma samples to establish a reliable biomarker model for risk stratification and treatment decision-making in colon cancer.

Detailed description

Colon cancer remains one of the leading causes of cancer-related mortality worldwide, and despite advances in screening and surgical techniques, a substantial proportion of patients continue to experience disease recurrence after curative resection. For patients with pathological stage IIB or higher disease, adjuvant chemotherapy is routinely recommended due to their elevated recurrence risk. However, accurately identifying these biologically aggressive cases before surgery remains a major clinical challenge, as current imaging-based staging often underestimates tumor burden and fails to capture underlying malignant potential. This diagnostic gap has hindered the optimal implementation of neoadjuvant chemotherapy (NAC) in colon cancer. To address this issue, the investigators established the EXPOSE study (Exosomal microRNA Signature for Pre-Operative Stage and Eligibility Evaluation), a multicenter translational research initiative aiming to develop and validate a noninvasive, biologically informed diagnostic assay capable of identifying patients with high-risk colon cancer-equivalent to pathological stage IIB or higher-who may benefit from NAC. The EXPOSE study will proceed through three structured phases. 1. In the discovery phase, exosomal microRNAs will be profiled using comprehensive small RNA sequencing to identify key biomarkers reflecting tumor aggressiveness. 2. In the training phase, the investigators will quantify candidate microRNAs using RT-qPCR and integrate their expression patterns via machine-learning algorithms to construct a predictive model for high-risk disease. 3. Finally, in the validation phase, the model's reproducibility, diagnostic accuracy, and generalizability will be tested in an independent clinical cohort. The final EXPOSE assay is expected to serve as a liquid biopsy-based tool for preoperative staging, enabling more precise identification of biologically advanced colon cancer cases. Upon completion, this study will deliver a rigorously validated diagnostic model that combines molecular and clinical data to guide neoadjuvant treatment decisions and enhance personalized care in colon cancer management.

Conditions

Interventions

TypeNameDescription
DIAGNOSTIC_TESTDiagnostic Test: EXPOSE assay(Small RNA-seq of exosomal miRNAs)Candidates identified from small RNA sequencing
DIAGNOSTIC_TESTDiagnostic Test: EXPOSE RT-qPCR panelQuantification of exosomal microRNAs (RT-qPCR)

Timeline

Start date
2025-01-15
Primary completion
2026-06-18
Completion
2026-06-18
First posted
2025-12-01
Last updated
2025-12-01

Locations

1 site across 1 country: United States

Source: ClinicalTrials.gov record NCT07255729. Inclusion in this directory is not an endorsement.