IoT Based ICU Healthcare: Optimizing Patient Monitoring and Treatment with Advanced Algorithms

Thiyagu T, Krishnaveni S
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Abstract

In the realm of IoT-based Intensive Care Unit (ICU) healthcare, the quest for precision and reliability in patient monitoring and treatment optimization is paramount. This study delves into the realm of advanced algorithms, particularly focusing on the Pelican Optimization Algorithm Long Short-Term Memory (POA-LSTM), known for its remarkable accuracy rates exceeding 95%. The POA-LSTM algorithm, fine-tuned through the Pelican Optimization Algorithm, emerges as a beacon of accuracy in ICU healthcare. By optimizing hyperparameters and leveraging the Pelican Optimization Algorithm's optimization prowess, POA-LSTM surpasses industry standards, offering unparalleled precision and recall rates. Its ability to make informed predictions and provide real-time insights significantly enhances the quality of patient care and clinical decision-making in ICU settings. Additionally, the study explores Context-Oriented Attention LSTM (COA-LSTM) and Particle Swarm Optimization Long Short-Term Memory (PSO-LSTM) algorithms, each contributing unique strengths to the landscape of IoT-based ICU healthcare. COA-LSTM's attention mechanism and PSO-LSTM's hyperparameter optimization further enrich the capabilities of predictive modeling and anomaly detection in critical care scenarios. Through the integration of these advanced algorithms, healthcare providers can harness the power of data-driven insights to revolutionize ICU healthcare, ensuring optimal patient outcomes and advancing the frontier of medical care in the digital age.
基于物联网的重症监护室医疗保健:利用先进算法优化患者监测和治疗
在基于物联网的重症监护室(ICU)医疗保健领域,病人监测和治疗优化的精确性和可靠性是最重要的。本研究深入探讨了高级算法领域,尤其关注鹈鹕优化算法长短时记忆(POA-LSTM),该算法以其超过 95% 的出色准确率而闻名。通过鹈鹕优化算法进行微调的 POA-LSTM 算法成为重症监护室医疗保健领域准确性的灯塔。通过优化超参数和利用鹈鹕优化算法的优化能力,POA-LSTM 超越了行业标准,提供了无与伦比的精确率和召回率。它的预测能力和实时洞察力大大提高了重症监护室的患者护理和临床决策质量。此外,该研究还探讨了上下文导向注意力 LSTM (COA-LSTM) 和粒子群优化长短期记忆 (PSO-LSTM) 算法,这两种算法在基于物联网的 ICU 医疗保健领域都有独特的优势。COA-LSTM 的注意力机制和 PSO-LSTM 的超参数优化进一步丰富了重症监护场景中的预测建模和异常检测功能。通过整合这些先进的算法,医疗保健提供商可以利用数据驱动的洞察力来彻底改变 ICU 医疗保健,确保最佳的患者治疗效果,并推动数字时代医疗保健的前沿发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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