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HMSS 2026 : The 2nd International Conference on Health Medical Systems and Services | |||||||||||||||
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Call For Papers | |||||||||||||||
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The era of digitized healthcare is transforming rapidly, with intelligent and secure health informatics systems at the heart of this revolution. As artificial intelligence, machine learning, cybersecurity, and digital health technologies continue to advance, their integration into healthcare environments is becoming essential — not only for researchers and innovators but also for start-ups and enterprises aiming to build a smarter, patient-centred future. The need for secure, scalable, and intelligent solutions is driving innovation across hospitals, clinics, public health agencies, and personal health technologies.
Recognizing this importance, the Health Medical Systems ans Services Conference (HMSS 2026) aims to provide a premier interdisciplinary forum for researchers, practitioners, and industry leaders to present and discuss cutting-edge research, innovative systems, and practical solutions in intelligent and secure health informatics. The conference emphasizes the integration of AI, machine learning, cybersecurity, and digital health technologies into healthcare systems to enhance patient outcomes, operational efficiency, and trust in digital healthcare services. HMSS 2026 invites original, unpublished research contributions that address theoretical foundations, system architectures, algorithms, applications, and real-world deployments of intelligent and secure health medical systems and services. Challenges and Competencies to be Addressed The conference particularly seeks contributions that address the following challenges and competencies: Intelligence in Clinical Decision-Making Designing AI-driven systems that support accurate, explainable, and trustworthy medical diagnosis, prognosis, and treatment planning. Security, Privacy, and Trust in Health Systems Ensuring confidentiality, integrity, and availability of sensitive health data through advanced cybersecurity, encryption, and privacy-preserving technologies. Scalable and Interoperable Health Informatics Architectures Building systems capable of handling large-scale, heterogeneous medical data across hospitals, laboratories, wearable devices, and public health platforms. Real-Time and Continuous Health Monitoring Processing streaming data from IoT, wearables, and body sensor networks for timely detection of health risks and clinical events. Human-Centered and Ethical AI in Healthcare Addressing fairness, bias, transparency, accountability, and regulatory compliance in AI-powered medical systems. Integration of Multimodal and Multisource Health Data Combining clinical records, medical images, sensor data, genomic information, and behavioral data for holistic health intelligence. Topics of Interest Original papers on all topics related to Health Medical Systems and Services are welcome, including but not limited to: Artificial Intelligence in Health Informatics Machine learning and deep learning applications in healthcare. Medical image analysis and computer-aided diagnosis. Natural language processing for electronic health records and clinical notes. Precision and Personalized Health Genomic and multi-omics data integration for individualized treatments. Digital twins for health simulation and outcome prediction. Lifestyle, behavioral, and environmental data analytics. Intelligent Health System Design Smart healthcare infrastructure and system architectures. IoT-enabled healthcare platforms. Real-time and edge-based health monitoring systems. Wearable and Implantable Body Sensor Networks (BSN) Sensor design and integration for medical wearables and implants. Secure communication protocols for BSNs. Continuous and remote patient monitoring applications. Cybersecurity in Health Information Systems Privacy-preserving data analytics and encryption techniques. Blockchain-based health data management. Authentication, authorization, and access control in medical systems. AI in Pharmaceutical Research and Drug Development AI-driven drug discovery and compound screening. Intelligent clinical trial design and monitoring. Pharmacovigilance and post-market surveillance. AI Applications in Nursing Practice and Workforce Optimization AI-assisted nursing documentation and clinical support. Predictive analytics for patient deterioration and staffing. Virtual simulation and AI-driven training for nursing education. Health Data Analytics Big data platforms for healthcare analytics. Predictive modeling for disease surveillance and outbreaks. Advanced visualization for clinical and public health insights. Intelligent Automation in Clinical Laboratory Sciences AI-based pathology and laboratory image analysis. Smart laboratory information systems (LIS). Predictive maintenance and quality assurance using AI. AI-Powered Transformation of Healthcare Delivery Patient flow optimization and hospital resource management. Virtual health assistants and smart scheduling systems. AI-enabled population health management. AI-Driven Innovations in Diagnosis and Treatment Multimodal diagnostic systems for complex diseases. Personalized and predictive treatment planning. Clinical decision support systems (CDSS). Target Audience HMSS 2026 is intended for a broad, interdisciplinary audience, including: Healthcare IT Architects and System Engineers Medical Informatics and Health Data Scientists AI, ML, and Deep Learning Researchers Clinicians, Nurses, and Allied Health Professionals Cybersecurity and Privacy Specialists Biomedical and Healthcare Engineers Pharmaceutical and Clinical Research Professionals Digital Health Start-ups and Industry Practitioners Health Policy Makers and Regulatory Experts Expected Outcomes The conference aims to achieve the following outcomes: Advanced frameworks and architectures for intelligent and secure health medical systems Cross-disciplinary collaboration between healthcare, AI, and cybersecurity communities Demonstrated real-world applications with measurable clinical and operational impact Guidelines for ethical, trustworthy, and secure AI deployment in healthcare Insights into future healthcare delivery models enabled by intelligent medical systems |
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