Classification Prediction of Alzheimer's Disease and Vascular Dementia Using Physiological Data and ECD SPECT Images.
Yu-Ching NiZhi-Kun LinChen-Han ChengMing-Chyi PaiPai-Yi ChiuChiung-Chih ChangYa-Ting ChangGuang-Uei HungKun-Ju LinIng-Tsung HsiaoChia-Yu LinHui-Chieh YangPublished in: Diagnostics (Basel, Switzerland) (2024)
Alzheimer's disease (AD) and vascular dementia (VaD) are the two most common forms of dementia. However, their neuropsychological and pathological features often overlap, making it difficult to distinguish between AD and VaD. In addition to clinical consultation and laboratory examinations, clinical dementia diagnosis in Taiwan will also include Tc-99m-ECD SPECT imaging examination. Through machine learning and deep learning technology, we explored the feasibility of using the above clinical practice data to distinguish AD and VaD. We used the physiological data (33 features) and Tc-99m-ECD SPECT images of 112 AD patients and 85 VaD patients in the Taiwanese Nuclear Medicine Brain Image Database to train the classification model. The results, after filtering by the number of SVM RFE 5-fold features, show that the average accuracy of physiological data in distinguishing AD/VaD is 81.22% and the AUC is 0.836; the average accuracy of training images using the Inception V3 model is 85% and the AUC is 0.95. Finally, Grad-CAM heatmap was used to visualize the areas of concern of the model and compared with the SPM analysis method to further understand the differences. This research method can quickly use machine learning and deep learning models to automatically extract image features based on a small amount of general clinical data to objectively distinguish AD and VaD.
Keyphrases
- deep learning
- machine learning
- artificial intelligence
- big data
- mild cognitive impairment
- convolutional neural network
- electronic health record
- end stage renal disease
- cognitive decline
- ejection fraction
- newly diagnosed
- chronic kidney disease
- clinical practice
- pet ct
- peritoneal dialysis
- oxidative stress
- prognostic factors
- mass spectrometry
- high speed