RPAI-TRG: RadioPathomics Artificial Intelligence Model to Predict Tumor Regression Grading in Locally Advanced Rectal Cancer

Sponsor
Sixth Affiliated Hospital, Sun Yat-sen University (Other)
Overall Status
Unknown status
CT.gov ID
NCT04273451
Collaborator
The Third Affiliated Hospital of Kunming Medical College. (Other), Sir Run Run Shaw Hospital (Other)
100
3
10.7
33.3
3.1

Study Details

Study Description

Brief Summary

In this study, investigators apply a radiopathomics artificial intelligence (AI) supportive model to predict neoadjuvant chemoradiotherapy (nCRT) response before the nCRT is delivered for the patients with locally advanced rectal cancer (LARC). The radiopathomics AI system predicts individual tumor regression grading (TRG) category based on each patient's radiopathomics features extracted from the Magnetic Resonance Imaging (MRI) and biopsy images. The predictive power to classify each patient into particular TRG category will be validated in this multicenter, prospective clinical study.

Condition or Disease Intervention/Treatment Phase

    Detailed Description

    This is a multicenter, prospective, observational clinical study for validation of a radiopathomics integrated artificial intelligence (AI) system. Patients who have been pathologically diagnosed as rectal adenocarcinoma and defined as clinical II-III staging without distant metastasis will be enrolled from the Sixth Affiliated Hospital of Sun Yat-sen University, the Third Affiliated Hospital of Kunming Medical College and Sir Run Run Shaw Hospital Affiliated by Zhejiang University School of Medicine. All participants should follow a standard treatment protocol, including neoadjuvant concurrent chemoradiotherapy (nCRT), total mesorectum excision (TME) surgery and adjuvant chemotherapy. Images of Magnetic Resonance Imaging (MRI) and biopsy hematoxylin & eosin (H&E) stained slides of each patient should be available before nCRT treatment. The tumor region within these images would be delineated manually by experienced radiologists and pathologists. Further, the outlined images will be presented to the radiopathomics AI system to classify each participant into particular tumor regression grading (TRG) category. Here, the American Joint Committee on Cancer and College of American Pathologist (AJCC/CAP) 4-category TRG system is served as the standard. The actual TRG category of each participant will be confirmed based on pathologic assessment after TME surgery. Through comparisons of the predicted TRG and actual TRG category, investigators calculate the prediction accuracy, specificity and sensitivity as well as the F1 score. This study is aimed to develop a reliable and robust AI system to predict pathologic TRG prior to nCRT administration, facilitating response-guided precision therapy for patients with locally advanced rectal cancer.

    Study Design

    Study Type:
    Observational
    Anticipated Enrollment :
    100 participants
    Observational Model:
    Other
    Time Perspective:
    Prospective
    Official Title:
    A RadioPathomics Integrated Artificial Intelligence System to Predict Tumor Regression Grading of Neoadjuvant Treatment in Locally Advanced Rectal Cancer: A Multicenter, Prospective and Observational Clinical Study
    Actual Study Start Date :
    Jan 10, 2020
    Anticipated Primary Completion Date :
    Jul 1, 2020
    Anticipated Study Completion Date :
    Dec 1, 2020

    Outcome Measures

    Primary Outcome Measures

    1. The prediction accuracy of the radiopathomics artificial intelligence model [baseline]

      The prediction accuracy of the radiopathomics artificial intelligence model for classifying each individual into particular AJCC/CAP TRG category will be calculated.

    Secondary Outcome Measures

    1. The specificity of the radiopathomics artificial intelligence model [baseline]

      The specificity of the radiopathomics artificial intelligence model for classifying each individual into particular AJCC/CAP TRG category will be calculated.

    2. The sensitivity of the radiopathomics artificial intelligence model [baseline]

      The sensitivity of the radiopathomics artificial intelligence model for classifying each individual into particular AJCC/CAP TRG category will be calculated.

    3. The F1 score of the radiopathomics artificial intelligence model [baseline]

      The F1 score of the radiopathomics artificial intelligence model for classifying each individual into particular AJCC/CAP TRG category will be calculated.

    Eligibility Criteria

    Criteria

    Ages Eligible for Study:
    18 Years to 75 Years
    Sexes Eligible for Study:
    All
    Accepts Healthy Volunteers:
    No
    Inclusion Criteria:
    • pathologically diagnosed as rectal adenocarcinoma

    • defined as clinical II-III staging (≥T3, and/or positive nodal status) without distant metastasis by enhanced Magnetic Resonance Imaging (MRI)

    • intending to receive or undergoing neoadjuvant concurrent chemoradiotherapy (5-fluorouracil based chemotherapy, given orally or intravenously; Intensity-Modulated Radiotherapy or Volume-Modulated Radiotherapy delivered at 50 gray (Gy) in gross tumor volume (GTV) and 45 Gy in clinical target volume (CTV) by 25 fractions)

    • intending to receive total mesorectum excision (TME) surgery after neoadjuvant therapy (not completed at the enrollment), and adjuvant chemotherapy

    • MRI (high-solution T2-weighted imaging, contrast-enhanced T1-weighted imaging, and diffusion-weighted imaging are required) examination is completed before the neoadjuvant chemoradiotherapy

    • biopsy H&E stained slides are available and scanned with high resolution before the neoadjuvant chemoradiotherapy

    Exclusion Criteria:
    • with history of other cancer

    • insufficient imaging quality of MRI to delineate tumor volume or obtain measurements (e.g., lack of sequence, motion artifacts)

    • insufficient imaging quality of biopsy slides imaging to delineate tumor volume or obtain measurements (e.g., tissue dissection, color anomaly)

    • incomplete neoadjuvant chemoradiotherapy

    • no surgery after neoadjuvant chemoradiotherapy resulting in lack of pathologic assessment of tumor response

    • tumor recurrence or distant metastasis during neoadjuvant chemoradiotherapy

    Contacts and Locations

    Locations

    Site City State Country Postal Code
    1 the Sixth Affiliated Hospital of Sun Yat-sen University Guangzhou Guangdong China 510655
    2 The Third Affiliated Hospital of Kunming Medical College Kunming Yunnan China 650000
    3 Sir Run Run Shaw Hospital Hangzhou Zhejiang China 310000

    Sponsors and Collaborators

    • Sixth Affiliated Hospital, Sun Yat-sen University
    • The Third Affiliated Hospital of Kunming Medical College.
    • Sir Run Run Shaw Hospital

    Investigators

    • Principal Investigator: Xiangbo Wan, MD, PhD, Sixth Affiliated Hospital, Sun Yat-sen University
    • Principal Investigator: Xinjuan Fan, MD, PhD, Sixth Affiliated Hospital, Sun Yat-sen University

    Study Documents (Full-Text)

    None provided.

    More Information

    Publications

    None provided.
    Responsible Party:
    wanxiangbo, Associate Professor of Radiation Oncology, Vice Director, Department of Radiation Oncology, Sixth Affiliated Hospital, Sun Yat-sen University
    ClinicalTrials.gov Identifier:
    NCT04273451
    Other Study ID Numbers:
    • RPAI-TRG2020
    First Posted:
    Feb 18, 2020
    Last Update Posted:
    Feb 18, 2020
    Last Verified:
    Feb 1, 2020
    Individual Participant Data (IPD) Sharing Statement:
    No
    Plan to Share IPD:
    No
    Studies a U.S. FDA-regulated Drug Product:
    No
    Studies a U.S. FDA-regulated Device Product:
    No
    Keywords provided by wanxiangbo, Associate Professor of Radiation Oncology, Vice Director, Department of Radiation Oncology, Sixth Affiliated Hospital, Sun Yat-sen University
    Additional relevant MeSH terms:

    Study Results

    No Results Posted as of Feb 18, 2020