MRI-Based Morphological Features as Predictors of Clinical Outcomes in Locally Advanced Rectal Cancer Treated with Neoadjuvant Chemoradiotherapy: Insights from a Single-Institution Experience
Marco Lucarelli, Consuelo Rosa, Giulia de Pasquale, Monica Di Tommaso, Tamara Santone, Antonietta Augurio, Angelo Di Pilla, Marianna Nuzzo, Maria Taraborrelli, Marianna Trignani, Annamaria Vinciguerra, Andrea Delli Pizzi, Marta Di Nicola, Domenico Genovesi, Andrea D’Aviero

TL;DR
This study shows that MRI-based features can predict outcomes in rectal cancer patients treated with chemoradiotherapy, helping guide personalized treatment.
Contribution
The study identifies specific MRI morphological features as novel predictors of long-term clinical outcomes in locally advanced rectal cancer.
Findings
Patients with TEMP > 5 mm had significantly worse local control and disease-free survival.
Extramural venous invasion was associated with significantly lower local control.
Persistent pathological lateral lymph nodes after treatment impacted local control.
Abstract
Objectives: This study evaluates MRI-based morphological features as predictors of long-term clinical outcomes in patients with locally advanced rectal cancer (LARC) treated with neoadjuvant chemoradiotherapy (CRT). Methods: A retrospective analysis was performed on 134 patients treated between 2014 and 2024. Patients underwent dose-intensified radiotherapy (55 Gy) with concurrent capecitabine followed by surgery. Radiological features analyzed on pre- and post-CRT MRI included Tumor Extension Beyond Muscularis Propria (TEMP), Circumferential Resection Margin (CRM), Extramural Venous Invasion (EMVI), and Lateral Lymph Nodes (LLN). Results: Five-year Overall Survival (OS), Disease-Free Survival (DFS), and Local Control (LC) rates were 85%, 83%, and 88%, respectively. Patients with TEMP > 5 mm had significantly worse LC (p = 0.02) and DFS (p = 0.04). A positive CRM (<1 mm) significantly…
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Taxonomy
TopicsColorectal Cancer Surgical Treatments · Colorectal and Anal Carcinomas · Radiomics and Machine Learning in Medical Imaging
