Publications by authors named "M Sariyar"

Pharmacogenetics (PGx) explores the influence of genetic variability on drug efficacy and tolerability. Synthetic Data Generation (SDG) has emerged as a promising alternative to the labor-intensive process of collecting real-world PGx data, which is required for high-qualitative prediction models. This study investigates the performance of two Generative Adversarial Network (GAN) models, CTGAN and CTAB-GAN+, in generating synthetic PGx data.

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Article Synopsis
  • * The project focuses on utilizing Large Language Models (LLMs) to extract medical info from ambulance staff-patient dialogues to fill out emergency protocol forms, although there's a lack of established dialogue examples for evaluation.
  • * A pipeline was created using "Zephyr-7b-beta" for dialogue generation, followed by refinement with GPT-4 Turbo, which led to a high accuracy of 94% initially, slightly dropping to 87% after refinement; sentiment analysis showed improved positivity in dialogues post-refinement, emphasizing both the potential and challenges of using LLM
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Article Synopsis
  • GNU Health is an open-source clinical information system designed to manage health records, hospital information, and laboratory data effectively and affordably.
  • Despite its advantages, GNU Health is not widely used in Europe due to barriers like regulatory challenges, interoperability issues, and resistance from existing proprietary systems.
  • The paper highlights potential benefits of adopting GNU Health, alongside a case study and expert interviews that discuss why overcoming these obstacles is difficult.
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Healthcare systems worldwide face escalating costs and demographic changes, necessitating effective evaluation tools to understand their underlying challenges. Switzerland's high-quality yet costly healthcare system underscores the need for robust assessment methods. Existing international rankings often lack transparency and comparability, highlighting the value of structured frameworks like the Health System Performance Assessment (HSPA) by the World Health Organization (WHO).

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Coding according to the International Classification of Diseases (ICD)-10 and its clinical modifications (CM) is inherently complex and expensive. Natural Language Processing (NLP) assists by simplifying the analysis of unstructured data from electronic health records, thereby facilitating diagnosis coding. This study investigates the suitability of transformer models for ICD-10 classification, considering both encoder and encoder-decoder architectures.

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