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Mimicking clinical trials with synthetic acute myeloid leukemia patients using generative artificial intelligence

  • Jan-Niklas Eckardt
  • , Waldemar Hahn
  • , Christoph Röllig
  • , Sebastian Stasik
  • , Uwe Platzbecker
  • , Carsten Müller-Tidow
  • , Hubert Serve
  • , Claudia D Baldus
  • , Christoph Schliemann
  • , Kerstin Schäfer-Eckart (Co-Autor/-in)
  • , Maher Hanoun
  • , Martin Kaufmann
  • , Andreas Burchert
  • , Christian Thiede
  • , Johannes Schetelig
  • , Martin Sedlmayr
  • , Martin Bornhäuser
  • , Markus Wolfien
  • , Jan Moritz Middeke
  • Technical University of Dresden
  • Center for Scalable Data Analytics and Artificial Intelligence (ScaDS.AI) Dresden/Leipzig
  • Masaryk University and University Hospital Brno
  • Department of Neuroradiology, University Hospital Heidelberg, Heidelberg, Germany; PD Dr. Markus Möhlenbruch
  • University Hospital Münster
  • Robert Bosch Krankenhaus
  • Philipps-Universität Marburg

Publikation: Beitrag in FachzeitschriftOriginalarbeitBegutachtung

45 Quellenangaben (Web of Science)

Abstract

Clinical research relies on high-quality patient data, however, obtaining big data sets is costly and access to existing data is often hindered by privacy and regulatory concerns. Synthetic data generation holds the promise of effectively bypassing these boundaries allowing for simplified data accessibility and the prospect of synthetic control cohorts. We employed two different methodologies of generative artificial intelligence - CTAB-GAN+ and normalizing flows (NFlow) - to synthesize patient data derived from 1606 patients with acute myeloid leukemia, a heterogeneous hematological malignancy, that were treated within four multicenter clinical trials. Both generative models accurately captured distributions of demographic, laboratory, molecular and cytogenetic variables, as well as patient outcomes yielding high performance scores regarding fidelity and usability of both synthetic cohorts (n = 1606 each). Survival analysis demonstrated close resemblance of survival curves between original and synthetic cohorts. Inter-variable relationships were preserved in univariable outcome analysis enabling explorative analysis in our synthetic data. Additionally, training sample privacy is safeguarded mitigating possible patient re-identification, which we quantified using Hamming distances. We provide not only a proof-of-concept for synthetic data generation in multimodal clinical data for rare diseases, but also full public access to synthetic data sets to foster further research.

OriginalspracheEnglisch
Aufsatznummer76
Seiten (von - bis)76
Seitenumfang11
FachzeitschriftNPJ digital medicine
Jahrgang7
Ausgabenummer1
DOIs
PublikationsstatusVeröffentlicht - 20 März 2024

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