Data-Driven Insights for Healthcare and Biotechnology
English
In the current era, the healthcare and biotechnology domains face unprecedented challenges. The vast sea of generated data still needs to be tapped, preventing realizing its full potential. Traditional approaches need to be more robust in harnessing the information available, leading to inefficiencies in diagnostics, patient care, drug discovery, and public health interventions. Moreover, ethical concerns loom large, demanding a paradigm shift towards responsible and ethical data practices. Through advanced analytics, machine learning, and artificial intelligence, Data-Driven Insights for Healthcare and Biotechnology pioneers a comprehensive understanding of data science's pivotal role in healthcare and biotechnology. Exploring the foundations of data science, illuminating the fundamentals of analytics, data collection techniques, and statistical inference in medical research, this book then transitions into the practical applications of data science in healthcare, delving into electronic health records, predictive analytics, natural language processing, and wearable technologies for remote patient monitoring. A particular emphasis is placed on predictive modeling in disease diagnosis, presenting case studies that showcase the real-world applications of machine learning in early disease detection. The book ventures into medical imaging, discussing the role of image analysis and computer vision in interpreting complex medical images and addressing challenges and advancements in radiology and pathology through data science. Genomics and personalized medicine are thoroughly explored, covering the analysis and interpretation of genomic data, pharmacogenomics, and ethical considerations in genomic data privacy and security. The narrative then seamlessly transitions to data science's crucial role in drug discovery and development, providing insights into high-throughput screening, data integration, clinical trials, and computational modeling. The application of artificial intelligence in diagnostics is dissected, exploring the harnessing of AI for accurate disease diagnosis, the role of deep learning, and strategies to address interpretability and transparency issues. The book concludes by addressing current challenges in adopting data science in healthcare and biotechnology, paving the way for future directions and emerging trends such as advancements in AI, integration of big data and IoT, blockchain technology, and the era of precision health. This book is ideal for data scientists, healthcare professionals, researchers, industry practitioners, policymakers, and students.
See more
Current price
€365.74
Original price
€384.99
Delivery/Collection within 10-20 working days