Quantum Transfer Learning to Boost Dementia Detection
By: Sounak Bhowmik, Talita Perciano, Himanshu Thapliyal
Potential Business Impact:
Quantum computers help find dementia faster.
Dementia is a devastating condition with profound implications for individuals, families, and healthcare systems. Early and accurate detection of dementia is critical for timely intervention and improved patient outcomes. While classical machine learning and deep learning approaches have been explored extensively for dementia prediction, these solutions often struggle with high-dimensional biomedical data and large-scale datasets, quickly reaching computational and performance limitations. To address this challenge, quantum machine learning (QML) has emerged as a promising paradigm, offering faster training and advanced pattern recognition capabilities. This work aims to demonstrate the potential of quantum transfer learning (QTL) to enhance the performance of a weak classical deep learning model applied to a binary classification task for dementia detection. Besides, we show the effect of noise on the QTL-based approach, investigating the reliability and robustness of this method. Using the OASIS 2 dataset, we show how quantum techniques can transform a suboptimal classical model into a more effective solution for biomedical image classification, highlighting their potential impact on advancing healthcare technology.
Similar Papers
Emotion Recognition in Older Adults with Quantum Machine Learning and Wearable Sensors
Machine Learning (CS)
Reads your feelings from your body signals.
Advances in Machine Learning: Where Can Quantum Techniques Help?
Machine Learning (CS)
Makes computers learn faster with quantum power.
Quantum Machine Learning in Healthcare: Evaluating QNN and QSVM Models
Machine Learning (CS)
Quantum computers find diseases better with tricky data.