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Modern Technologies in Biomedical Engineering and Their Role in Improving Healthcare Quality
0
Zitationen
6
Autoren
2025
Jahr
Abstract
Biomedical engineering is an interdisciplinary field that merges the principles of engineering and medical sciences to develop innovative solutions for healthcare challenges. Over the past decade, rapid technological advancements have transformed the way health conditions are diagnosed, monitored, and treated. This research provides a comprehensive review of recent developments in biomedical technologies, focusing on four primary areas: wearable medical devices, advanced medical imaging, robotic-assisted surgery, and tissue engineering. The study employs a thematic qualitative methodology based on a systematic review of peer-reviewed literature, analyzing key innovations, their clinical impacts, and integration challenges. The findings reveal that wearable devices have significantly improved chronic disease management through real-time physiological monitoring, while imaging technologies, enhanced by artificial intelligence, have elevated diagnostic precision and early disease detection. Robotic-assisted surgeries have led to reduced complications and faster recovery times, and tissue engineering shows promising potential in regenerative medicine despite ongoing challenges in scalability and biocompatibility. However, the study also identifies persistent issues such as device interoperability, cybersecurity risks, and regulatory constraints. This paper concludes that biomedical engineering will continue to play a critical role in shaping the future of healthcare. The integration of AI, nanotechnology, and personalized medicine is expected to further accelerate innovation. Addressing existing barriers through multidisciplinary collaboration will be essential in maximizing the benefits of biomedical technologies and ensuring equitable access to advanced healthcare solutions globally.
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