Deep Learning Histology for Prediction of Lymph Node Metastases and Tumor Regression after Neoadjuvant FLOT Therapy of Gastroesophageal Adenocarcinoma

Cancers (Basel). 2024 Jul 3;16(13):2445. doi: 10.3390/cancers16132445.

Abstract

Background: The aim of this study was to establish a deep learning prediction model for neoadjuvant FLOT chemotherapy response. The neural network utilized clinical data and visual information from whole-slide images (WSIs) of therapy-naïve gastroesophageal cancer biopsies.

Methods: This study included 78 patients from the University Hospital of Cologne and 59 patients from the University Hospital of Heidelberg used as external validation.

Results: After surgical resection, 33 patients from Cologne (42.3%) were ypN0 and 45 patients (57.7%) were ypN+, while 23 patients from Heidelberg (39.0%) were ypN0 and 36 patients (61.0%) were ypN+ (p = 0.695). The neural network had an accuracy of 92.1% to predict lymph node metastasis and the area under the curve (AUC) was 0.726. A total of 43 patients from Cologne (55.1%) had less than 50% residual vital tumor (RVT) compared to 34 patients from Heidelberg (57.6%, p = 0.955). The model was able to predict tumor regression with an error of ±14.1% and an AUC of 0.648.

Conclusions: This study demonstrates that visual features extracted by deep learning from therapy-naïve biopsies of gastroesophageal adenocarcinomas correlate with positive lymph nodes and tumor regression. The results will be confirmed in prospective studies to achieve early allocation of patients to the most promising treatment.

Keywords: FLOT therapy; artificial intelligence; chemotherapy response; deep learning; gastroesophageal cancer; neural network; prediction algorithm.

Grants and funding

J.-O.J. was supported by the Koeln Fortune Program/Faculty of Medicine, the University of Cologne. J.I.P. was funded by the German Ministry of Education and Research (BMBF), project FKZ: 01IS20054. Y.T. was funded by the German Ministry of Education and Research (BMBF; grant FED-PATH) and Wilhelm-Sander Stiftung (2022.040.1). K.B. was funded by the German Ministry of Education and Research (BMBF), grant FKZ: 01ZX1917B. Regional Computing Center of the University of Cologne (RRZK) (funding number: INST 216/512/1FUGG).