Automating clinical assessments of memory deficits: Deep Learning based scoring of the Rey-Osterrieth Complex Figure

Author:

Langer Nicolas123,Weber Maurice4,Vieira Bruno Hebling123,Strzelczyk Dawid123,Wolf Lukas1,Pedroni Andreas123,Heitz Jonathan4,Müller Stephan4,Schultheiss Christoph4,Tröndle Marius123,Arango Lasprilla Juan Carlos5,Rivera Diego67,Scarpina Federica89,Zhao Qianhua10,Leuthold Rico11,Wehrle Flavia12,Jenni Oskar G.12,Brugger Peter13,Zaehle Tino14ORCID,Lorenz Romy151617,Zhang Ce4

Affiliation:

1. Methods of Plasticity Research, Department of Psychology, University of Zurich

2. University Research Priority Program (URPP) Dynamics of Healthy Aging

3. Neuroscience Center Zurich (ZNZ), University of Zurich and ETH Zurich

4. Department of Computer Science

5. Virginia Commonwealth University. Richmond

6. Department of Health Science, Public University of Navarre

7. Instituto de Investigación Sanitaria de Navarra (IdiSNA)

8. "Rita Levi Montalcini" Department of Neurosciences, University of Turin

9. I.R.C.C.S. Istituto Auxologico Italiano, U.O. di Neurologia e Neuroriabilitazione, Ospedale San Giuseppe, Piancavallo (VCO)

10. Huashan Hospital

11. Smartcode

12. University Children’s Hospital Zurich, Child Development Center

13. Rehabilitation Center

14. University Hospital Magdeburg University Department of Neurology

15. MRC Cognition and Brain Sciences Unit, University of Cambridge

16. Department of Neurophysics, Max Planck Institute for Human Cognitive and Brain Sciences

17. Stanford University

Abstract

Memory deficits are a hallmark of many different neurological and psychiatric conditions. The Rey-Osterrieth complex figure (ROCF) is the state–of-the-art assessment tool for neuropsychologists across the globe to assess the degree of non-verbal visual memory deterioration. To obtain a score, a trained clinician inspects a patient’s ROCF drawing and quantifies deviations from the original figure. This manual procedure is time-consuming, slow and scores vary depending on the clinician’s experience, motivation and tiredness.Here, we leverage novel deep learning architectures to automatize the rating of memory deficits. For this, we collected more than 20k hand-drawn ROCF drawings from patients with various neurological and psychiatric disorders as well as healthy participants. Unbiased ground truth ROCF scores were obtained from crowdsourced human intelligence. This dataset was used to train and evaluate a multi-head convolutional neural network.The model performs highly unbiased as it yielded predictions very close to the ground truth and the error was similarly distributed around zero. The neural network outperforms both online raters and clinicians. The scoring system can reliably identify and accurately score individual figure elements in previously unseen ROCF drawings, which facilitates explainability of the AI-scoring system. To ensure generalizability and clinical utility, the model performance was successfully replicated in a large independent prospective validation study that was pre-registered prior to data collection.Our AI-powered scoring system provides healthcare institutions worldwide with a digital tool to assess objectively, reliably and time-efficiently the performance in the ROCF test from hand-drawn images.

Publisher

eLife Sciences Publications, Ltd

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