ho chi minh
ALGNet: Attention Light Graph Memory Network for Medical Recommendation System
Nguyen, Minh-Van, Nguyen, Duy-Thinh, Trinh, Quoc-Huy, Le, Bac-Hoai
Medication recommendation is a vital task for improving patient care and reducing adverse events. However, existing methods often fail to capture the complex and dynamic relationships among patient medical records, drug efficacy and safety, and drug-drug interactions (DDI). In this paper, we propose ALGNet, a novel model that leverages light graph convolutional networks (LGCN) and augmentation memory networks (AMN) to enhance medication recommendation. LGCN can efficiently encode the patient records and the DDI graph into low-dimensional embeddings, while AMN can augment the patient representation with external knowledge from a memory module. We evaluate our model on the MIMIC-III dataset and show that it outperforms several baselines in terms of recommendation accuracy and DDI avoidance. We also conduct an ablation study to analyze the effects of different components of our model. Our results demonstrate that ALGNet can achieve superior performance with less computation and more interpretability. The implementation of this paper can be found at: https://github.com/huyquoctrinh/ALGNet.
- Asia > Vietnam > Hồ Chí Minh City > Hồ Chí Minh City (0.05)
- Oceania > Australia (0.04)
- North America > United States > New York > New York County > New York City (0.04)
- (3 more...)
IncepSE: Leveraging InceptionTime's performance with Squeeze and Excitation mechanism in ECG analysis
Cao, Tue Minh, Tran, Nhat Hong, Nguyen, Le Phi, Pham, Hieu Huy, Nguyen, Hung Thanh
Our study focuses on the potential for modifications of Inception-like architecture within the electrocardiogram (ECG) domain. To this end, we introduce IncepSE, a novel network characterized by strategic architectural incorporation that leverages the strengths of both InceptionTime and channel attention mechanisms. Furthermore, we propose a training setup that employs stabilization techniques that are aimed at tackling the formidable challenges of severe imbalance dataset PTB-XL and gradient corruption. By this means, we manage to set a new height for deep learning model in a supervised learning manner across the majority of tasks. Our model consistently surpasses InceptionTime by substantial margins compared to other state-of-the-arts in this domain, noticeably 0.013 AUROC score improvement in the "all" task, while also mitigating the inherent dataset fluctuations during training.
- Asia > Vietnam > Hanoi > Hanoi (0.06)
- North America > United States > Illinois (0.05)
- South America > Peru > Loreto Department (0.04)
- (2 more...)
Junior Data Engineer, Visily (contract) at KMS Technology - Ho Chi Minh, Vietnam
Visily is an AI-powered UI design software started from KMS Labs, the startup incubation arm of KMS Technology. You are ambitious and want to be part of a high-impact startup. You are able to wear multiple hats on a regular basis. You are fanatical about getting things done. You want to commit to a mission and the team that is behind it.
Senior Data Engineer, KMS Healthcare at KMS Technology - Ho Chi Minh, Vietnam
KMS Healthcare is the intersection of world-class technologists and proven Healthcare industry expertise. We empower companies to build transformative next-gen technologies to bring about game-changing resolutions to healthcare's most challenging problems. Our solutions ensure improved data exchange while maintaining regulatory compliance and data-driven requirements. We are committed to providing innovative tools and expertise to providers, payers, life sciences, and medical technology vendors in order to help create industry-leading health solutions. At KMS Healthcare, we leverage technologies to enable a modern way of health service.