Oops, you're using an old version of your browser so some of the features on this page may not be displaying properly.

MINIMAL Requirements: Google Chrome 24+Mozilla Firefox 20+Internet Explorer 11Opera 15–18Apple Safari 7SeaMonkey 2.15-2.23

Poster session 17

1413P - Multi-modal deep-learning model for real-time prediction of recurrence in early-stage esophageal cancer: A multi-modal approach

Date

14 Sep 2024

Session

Poster session 17

Topics

Cancer Intelligence (eHealth, Telehealth Technology, BIG Data);  Surgical Oncology

Tumour Site

Thoracic Malignancies

Presenters

Hyun Ae Jung

Citation

Annals of Oncology (2024) 35 (suppl_2): S878-S912. 10.1016/annonc/annonc1603

Authors

D. Lee1, B. Park2, K. Lee1, H.Y. Lee3, T.J. Kim3, Y.J. Jeon4, J. Lee5, J.H. Cho5, H.K. Kim5, Y.S. Choi5, S. Park6, J. Sun7, S. Lee8, J.S. Ahn7, M. Ahn9

Author affiliations

  • 1 N/a, Spidercore Inc., 34134 - Daejeon si/KR
  • 2 Biomedical Statistics Center, Samsung Medical Center (SMC), 135-710 - Seoul/KR
  • 3 Department Of Radiology And Center For Imaging Science, Samsung Medical Center (SMC), 135-710 - Seoul/KR
  • 4 Department Of Thoracic And Cardiovascular Surgery, Samsung Medical Center (SMC), 135-710 - Seoul/KR
  • 5 Thoracic And Cardiovascular Surgery Department, Samsung Medical Center (SMC) - Sungkyunkwan University School of Medicine, 135-710 - Seoul/KR
  • 6 Hematology And Medical Oncology, Samsung Medical Center (SMC), 06351 - Seoul/KR
  • 7 Medicine Department, Samsung Medical Center (SMC) - Sungkyunkwan University School of Medicine, 135-710 - Seoul/KR
  • 8 Medical Oncology, Samsung Medical Center (SMC), 06351 - Seoul/KR
  • 9 Hematology-oncology Department, Samsung Medical Center (SMC) - Sungkyunkwan University School of Medicine, 135-710 - Seoul/KR

Resources

Login to get immediate access to this content.

If you do not have an ESMO account, please create one for free.

Abstract 1413P

Background

The surveillance protocol for early-stage esophageal cancer is not contingent upon individualized risk factors for recurrence. This study aimed to develop a deep-learning model using comprehensive data from clinical practice for practical longitudinal monitoring.

Methods

A multi-modal deep-learning model employing transformers was developed for real-time recurrence prediction using clinical, pathological, and molecular data at baseline, alongside longitudinal laboratory, and radiologic data during surveillance. Patients with histologically confirmed esophageal cancer (stage I-III) undergoing curative intent surgery between January 2008 and September 2022 were included. The collected data was divided into training and validation in a 5:5 ratio. The primary outcome focused on predicting likelihood of recurrence within one year from the monitoring point. This study demonstrated the timely provision of risk scores (RADAR score), determined thresholds, and the corresponding Area Under the Curve (AUC).

Results

A total of 1,486 patients were enrolled (655 with stage I, 457 with stage II, and 374 with stage III). The training and validation sets comprised 743 and 743 patients, respectively. The model incorporated 9 clinical-pathological-molecular factors at baseline, alongside longitudinal laboratory, and radiologic text data. Radiologic data of 11,933 was used (mean 8.0 chest CT scan per patient) during surveillance. Baseline RADAR score wsa 0.257 (standard deviation [Std] 0.132) in stage I, 0.468 (Std 0.116) in stage II, and 0.684 (Std 0.107) in stage III. The AUC for predicting relapse within one year from that monitoring point was 0.795 across all stages with the sensitivity of 77.2% and specificity of 70.1% (AUC=0.774 in stage I, AUC=0.697 in stage II, and AUC=0.683 in stage III).

Conclusions

This pilot study introduces a deep-learning model utilizing multi-modal data from routine clinical practice for predicting relapse in early-stage esophageal cancer. It demonstrates the timely provision of risk score, RADAR score, to clinicians for recurrence prediction, potentially guiding risk- adapted surveillance strategies and aggressive adjuvant systemic treatment.

Clinical trial identification

Editorial acknowledgement

Legal entity responsible for the study

The authors.

Funding

Has not received any funding.

Disclosure

All authors have declared no conflicts of interest.

This site uses cookies. Some of these cookies are essential, while others help us improve your experience by providing insights into how the site is being used.

For more detailed information on the cookies we use, please check our Privacy Policy.

Customise settings
  • Necessary cookies enable core functionality. The website cannot function properly without these cookies, and you can only disable them by changing your browser preferences.