Prediction of metastatic pheochromocytoma and paraganglioma: A machine learning modelling study using data from a cross-sectional cohort

Research output: Contribution to journalResearch articleContributedpeer-review

Contributors

  • Christina Pamporaki - , Department of Internal Medicine III (Author)
  • Annika M A Berends - , University of Groningen (Author)
  • Angelos Filippatos - , Institute of Lightweight Engineering and Polymer Technology, University Hospital Carl Gustav Carus Dresden, University of Patras (Author)
  • Tamara Prodanov - , National Institutes of Health (NIH) (Author)
  • Leah Meuter - , National Institutes of Health (NIH) (Author)
  • Alexander Prejbisz - , National Institute of Cardiology, Warszawa (Author)
  • Felix Beuschlein - , Hospital of the Ludwig-Maximilians-University (LMU) Munich, University Hospital Zurich (Author)
  • Martin Fassnacht - , University Hospital of Würzburg (Author)
  • Henri J L M Timmers - , Radboud University Medical Center (Author)
  • Svenja Nölting - , Hospital of the Ludwig-Maximilians-University (LMU) Munich, University Hospital Zurich (Author)
  • Kaushik Abhyankar - , Institute of Lightweight Engineering and Polymer Technology, University Hospital Carl Gustav Carus Dresden (Author)
  • Georgiana Constantinescu - , Department of Internal Medicine III (Author)
  • Carola Kunath - , University Hospital Carl Gustav Carus Dresden (Author)
  • Robbert J de Haas - , University of Groningen (Author)
  • Katharina Wang - , Hospital of the Ludwig-Maximilians-University (LMU) Munich (Author)
  • Hanna Remde - , University Hospital of Würzburg (Author)
  • Stefan R Bornstein - , Department of Internal Medicine III (Author)
  • Andrzeij Januszewicz - , National Institute of Cardiology, Warszawa (Author)
  • Mercedes Robledo - , Spanish National Cancer Research Center, Madrid, Biomedical Network on Rare Diseases (CIBERER) (Author)
  • Jacques W M Lenders - , Radboud University Medical Center, University Hospital Carl Gustav Carus Dresden (Author)
  • Michiel N Kerstens - , University of Groningen (Author)
  • Karel Pacak - , National Institutes of Health (NIH) (Author)
  • Graeme Eisenhofer - , Institute of Clinical Chemistry and Laboratory Medicine, Department of Internal Medicine III (Author)

Abstract

BACKGROUND: Pheochromocytomas and paragangliomas have up to a 20% rate of metastatic disease that cannot be reliably predicted. This study prospectively assessed whether the dopamine metabolite, methoxytyramine, might predict metastatic disease, whether predictions might be improved using machine learning models that incorporate other features, and how machine learning-based predictions compare with predictions made by specialists in the field.

METHODS: In this machine learning modelling study, we used cross-sectional cohort data from the PMT trial, based in Germany, Poland, and the Netherlands, to prospectively examine the utility of methoxytyramine to predict metastatic disease in 267 patients with pheochromocytoma or paraganglioma and positive biochemical test results at initial screening. Another retrospective dataset of 493 patients with these tumors enrolled under clinical protocols at National Institutes of Health (00-CH-0093) and the Netherlands (PRESCRIPT trial) was used to train and validate machine learning models according to selections of additional features. The best performing machine learning models were then externally validated using data for all patients in the PMT trial. For comparison, 12 specialists provided predictions of metastatic disease using data from the training and external validation datasets.

FINDINGS: Prospective predictions indicated that plasma methoxytyramine could identify metastatic disease at sensitivities of 52% and specificities of 85%. The best performing machine learning model was based on an ensemble tree classifier algorithm that used nine features: plasma methoxytyramine, metanephrine, normetanephrine, age, sex, previous history of pheochromocytoma or paraganglioma, location and size of primary tumours, and presence of multifocal disease. This model had an area under the receiver operating characteristic curve of 0·942 (95% CI 0·894-0·969) that was larger (p<0·0001) than that of the best performing specialist before (0·815, 0·778-0·853) and after (0·812, 0·781-0·854) provision of SDHB variant data. Sensitivity for prediction of metastatic disease in the external validation cohort reached 83% at a specificity of 92%.

INTERPRETATION: Although methoxytyramine has some utility for prediction of metastatic pheochromocytomas and paragangliomas, sensitivity is limited. Predictive value is considerably enhanced with machine learning models that incorporate our nine recommended features. Our final model provides a preoperative approach to predict metastases in patients with pheochromocytomas and paragangliomas, and thereby guide individualised patient management and follow-up.

FUNDING: Deutsche Forschungsgemeinschaft.

Details

Original languageEnglish
Pages (from-to)e551-e559
Number of pages9
JournalThe Lancet : Digital health
Volume5
Issue number9
Publication statusPublished - Sept 2023
Peer-reviewedYes

External IDs

Mendeley 0ea5489b-b52a-396e-9385-2e23e5e04d28
Scopus 85168803138
WOS 001070549800001
ORCID /0000-0003-0311-1745/work/142241466

Keywords

DFG Classification of Subject Areas according to Review Boards

Subject groups, research areas, subject areas according to Destatis

Keywords

  • Adrenal Gland Neoplasms/diagnosis, Paraganglioma/diagnosis, Prospective Studies, Cross-Sectional Studies, United States, Humans, Retrospective Studies, Pheochromocytoma/diagnosis, Machine Learning

Library keywords