CVAISep 4, 2024

Multi-stream deep learning framework to predict mild cognitive impairment with Rey Complex Figure Test

arXiv:2409.02883v1h-index: 5
Originality Incremental advance
AI Analysis

This work addresses the need for more reliable and robust predictive models for early MCI screening in clinical settings, though it is incremental as it builds on existing automated scoring methods.

The researchers tackled the problem of predicting mild cognitive impairment (MCI) using the Rey Complex Figure Test by developing a multi-stream deep learning framework, achieving an AUC of 0.872 and accuracy of 0.781 in external validation.

Drawing tests like the Rey Complex Figure Test (RCFT) are widely used to assess cognitive functions such as visuospatial skills and memory, making them valuable tools for detecting mild cognitive impairment (MCI). Despite their utility, existing predictive models based on these tests often suffer from limitations like small sample sizes and lack of external validation, which undermine their reliability. We developed a multi-stream deep learning framework that integrates two distinct processing streams: a multi-head self-attention based spatial stream using raw RCFT images and a scoring stream employing a previously developed automated scoring system. Our model was trained on data from 1,740 subjects in the Korean cohort and validated on an external hospital dataset of 222 subjects from Korea. The proposed multi-stream model demonstrated superior performance over baseline models (AUC = 0.872, Accuracy = 0.781) in external validation. The integration of both spatial and scoring streams enables the model to capture intricate visual details from the raw images while also incorporating structured scoring data, which together enhance its ability to detect subtle cognitive impairments. This dual approach not only improves predictive accuracy but also increases the robustness of the model, making it more reliable in diverse clinical settings. Our model has practical implications for clinical settings, where it could serve as a cost-effective tool for early MCI screening.

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