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Poster session 03

934P - Harnessing artificial intelligence on real-world data to predict recurrence in head and neck squamous cell carcinoma patients: The HNC-TACTIC study

Date

14 Sep 2024

Session

Poster session 03

Topics

Tumour Site

Head and Neck Cancers

Presenters

Hisham Mehanna

Citation

Annals of Oncology (2024) 35 (suppl_2): S613-S655. 10.1016/annonc/annonc1594

Authors

H. Mehanna1, S. Baliga2, M.L.K. Chua3, P. Parente4, A. Castro Calvo5, J. Rogado6, V. Gonzalez7, F. Aguilar8, D. Culie9, A. Sanabria10, M. Guiz11, J. Davies12, M. Stoehr13, S.F. Zuñiga14, R. Giger15, M. López16, E. Castillo16, L. Cabal Hierro16, H.T. Study Group17, M. Taberna16

Author affiliations

  • 1 Medical And Dental School, The University of Birmingham - Institute for Cancer Studies, B15 2TT - Birmingham/GB
  • 2 Radiation Oncology Unit, Massachusetts General Hospital, Boston/US
  • 3 Head And Neck And Thoracic Cancers Unit, NCCS - National Cancer Centre Singapore, 169610 - Singapore/SG
  • 4 Oncology Surgery Unit, Complejo Hospitalario Universitario de a Coruna, 15006 - Coruna/ES
  • 5 Otorhinolaryngology Unit, Hospital Universitario La Paz, 28046 - Madrid/ES
  • 6 Medical Oncology Department, Hospital Universitario Infanta Leonor, 28031 - Madrid/ES
  • 7 Otorhinolaryngology Unit, Hospital Universitario de Móstoles, 28935 - Mostoles/ES
  • 8 Otorhinolaryngology Unit, Hospital general granollers, 08402 - Barcelona/ES
  • 9 Oncology Surgery Unit, CLCC - Centre Antoine Lacassagne, 06100 - Nice/FR
  • 10 Oncology Surgery Unit, Hospital Alma Mater de Antioquia, 050010 - Antioquia/CO
  • 11 Oncology Service, Hospital del Mar - Parc de Salut Mar, 08003 - Barcelona/ES
  • 12 Oncology Surgery Unit, Mount Sinai Hospital, M5G 1X5 - Toronto/CA
  • 13 Medical Oncology Department, Universitätsklinikum Leipzig - Klinik und Poliklinik für Hämatologie, Zelltherapie und Hämostaseologie, 04103 - Leipzig/DE
  • 14 Otorhinolaryngology Unit, hospital universitario nacional de colombia, 111321 - Bogota/CO
  • 15 Otorhinolaryngology, Head And Neck Surgery Unit, University Hospital Inselspital Bern, 3010 - Bern/CH
  • 16 Scientific Department, SAVANA S.L., 28004 - Madrid/ES
  • 17 Scientific Department, MEDSAVANA S.L., 28004 - Madrid/ES

Resources

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Abstract 934P

Background

Almost half of patients with early/locally advanced (LA) head and neck squamous cell carcinoma (HNSCC) progress or relapse within 2 years. We applied artificial intelligence (AI) techniques to extract clinical variables from electronic health records (EHR) and to predict treatment failure.

Methods

This is an international, observational, retrospective study using free-text and structured data from HNSCC patients’ EHRs. A total of 203 clinical variables were extracted running EHRead®, a multilingual natural language processing (NLP) engine employing SNOMED-CT, from the EHR’s of HNSCC patients from 6 hospitals from Spain, France, and Colombia (2014-2021). Only patients with incident early/LA HNSCC were included. We utilized machine learning to train and 10-fold-cross validate several algorithms to predict progression, recurrence, or death within 2 years after radical treatment, selecting the model with the best performance metrics.

Results

Among 2,034,994 patients screened, 1,209 individuals were identified with early (44%) and LA (56%) HNSCC: 39.7% oral cavity, 32.8% larynx, 23.1% oropharynx, and 4.5% hypopharynx. Median age was 65 years (69.2% male). Main comorbidities were hypertension (50.1%), diabetes (33.3%). Most frequent symptoms at diagnosis were pain (60.7%), dysphagia (25.6%). A total of 484 (40%) patients experienced progression, recurrence, or death within 2 years. The algorithm with the best performance to predict radical treatment failure employed a random forest model, with an area under the ROC curve of 0.709. The main predictors of this model were: Age, stage, alcohol consumption, involved nodes, pain at diagnosis and surgical treatment.

Conclusions

This first phase of the HNC-TACTIC study shows the ability of NLP to extract accurate clinical data from HNSCC patients’ EHRs, and for machine-learning models to predict risk of treatment failure, demonstrating the potential capabilities of AI-powered real-world studies. The next phase will validate and retrain this model on data from 9 countries.

Clinical trial identification

NCT05117775.

Editorial acknowledgement

Legal entity responsible for the study

Savana S.L.

Funding

Savana S. L.

Disclosure

M. López, E. Castillo: Financial Interests, Institutional, Full or part-time Employment: Savana S. L. L. Cabal Hierro: Non-Financial Interests, Institutional, Full or part-time Employment: Savana S. L. H.T. Study Group: Financial Interests, Institutional, Full or part-time Employment, Judith Marín-Corral, Bianca de León, Ignacio Salcedo, David Casadevall, Victor Fanjul, Sebastian Menke, Almudena Chapa, Adrián Ceja: Savana S. L. ; Non-Financial Interests, Institutional, Affiliate, John de Almeida (UHN Canada), Andreas Dietz (Leipzig, Germany), Robert Ferris (UPMC, USA, Raul Giglio (Hospital Roffo, Argentina), Chris Holsinger (Stanford University School of Medicine, USA), Kate Hutcheson (MD Anderson Cancer Center, USA), Sandro Porceddu (Queensland Health, Australia), Christian Simon (Lausanne University Hospital, Switzerland), Ana López Alfonso (HUIL, Spain), Gloria María Serrano Montero (HUIL, Spain), Laura Rodrigáñez Riesco (H La Paz, Spain), Beatriz Castelo Fernández (H La Paz, Spain), Cristina Urbano (H de Granollers, Spain), Jordi Serra Carreras (H Granollers, Spain), Carlos García (H Alma Matter de Antioquia, Colombia), Yair Monsalve (H Alma Matter de Antioquia, Colombia), Javier Alonso Ortega (H de Móstoles, Spain), Gabriela Morales Medina (H de Móstoles, Spain), Renaud Schiappa (Centre Antoine Lacassagne, France,: Savana S. L. M. Taberna: Financial Interests, Institutional, Full or part-time Employment: Savana S. L. All other authors have declared no conflicts of interest.

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