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L‐VISP: LSTM Visualization for Interpretable Symptom Prediction in Patient Cohorts
0
Zitationen
7
Autoren
2026
Jahr
Abstract
Abstract Symptom modelling in head and neck cancer is challenged by the complexity of heterogeneous patient data, leading to an interest in deep learning approaches. Although Long Short‐Term Memory Networks (LSTMs) have shown great results in patient risk prediction, their low interpretability requires data modellers to collaborate with clinical experts to validate the results. We present L‐VISP, a human–machine solution that uses visual analytics for LSTM modelling in clinical research. L‐VISP uses custom visual encodings to make multiple LSTM variants interpretable, supporting a full range of analysis, from understanding model operations and evaluating performance to interpreting results in a clinical context. We evaluate L‐VISP with data modellers and a clinical oncologist and present the takeaways from this multidisciplinary collaboration.
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