TY - JOUR
T1 - Predicting Aggressive Behavior in Dementia Patients Using Text Classificationwith Word2Vec-LSTM
AU - Iram, Shamaila
AU - Thayyil, Rejeesh
AU - Farid, Hafiz
PY - 2024/8/18
Y1 - 2024/8/18
N2 - Aggressive behaviour in dementia patients poses significant challenges for caregivers and healthcare providers. This study aims to develop and evaluate Long Short-Term Memory (LSTM) and Bidirectional LSTM (BiLSTM) models, integrated with word2vec embedding, for accurately predicting aggressive behaviour in dementia patients. Leveraging existing datasets containing pertinent information such as agitation levels and location, our models are trained to discern patterns indicative of aggressive episodes. Healthcare, a complex domain notorious for its diagnostic intricacies, stands to benefit greatly from such predictive analytics. We assess the efficacy of our models by comparing their predictive accuracy against established methodologies in dementia care. Furthermore, we investigate techniques to enhance model performance and discuss potential applications within clinical settings. This research underscores the utility of machine learning and deep learning in addressing critical challenges within healthcare, particularly in the realm of behavioural prediction in dementia care
AB - Aggressive behaviour in dementia patients poses significant challenges for caregivers and healthcare providers. This study aims to develop and evaluate Long Short-Term Memory (LSTM) and Bidirectional LSTM (BiLSTM) models, integrated with word2vec embedding, for accurately predicting aggressive behaviour in dementia patients. Leveraging existing datasets containing pertinent information such as agitation levels and location, our models are trained to discern patterns indicative of aggressive episodes. Healthcare, a complex domain notorious for its diagnostic intricacies, stands to benefit greatly from such predictive analytics. We assess the efficacy of our models by comparing their predictive accuracy against established methodologies in dementia care. Furthermore, we investigate techniques to enhance model performance and discuss potential applications within clinical settings. This research underscores the utility of machine learning and deep learning in addressing critical challenges within healthcare, particularly in the realm of behavioural prediction in dementia care
KW - Healthcare Predictive Analytics,
KW - Word2Vec Embedding,
KW - Dementia Patients,
KW - Machine Learning and Deep Learning
U2 - 10.69511/ijdsaa.v6i7.213
DO - 10.69511/ijdsaa.v6i7.213
M3 - Article
VL - 6
SP - 394
EP - 402
JO - International Journal of Data Science and Advanced Analytics
JF - International Journal of Data Science and Advanced Analytics
IS - 7
ER -