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  • Rama Devi Drakshpalli

    Language: English

    Published by Independently Published, 2025

    ISBN 13: 9798279329304

    Seller: Grand Eagle Retail, Bensenville, IL, U.S.A.

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    Paperback. Condition: new. Paperback. Artificial intelligence, machine learning, and advanced automation are increasingly shaping pharmaceutical research and development. Yet despite significant investment and technical progress, many organizations struggle to translate AI-driven innovation into sustained, trustworthy impact-particularly in precision medicine, where scientific decisions depend on the continuity, quality, and integrity of evidence across discovery and translational research.AI- and Data Science-Driven Automation for Pharmaceutical R&D in Precision Medicine addresses this challenge by introducing an evidence-grade approach to automation. Rather than focusing on algorithms, tools, or vendor platforms, the book examines how AI and data science must be embedded within research workflows that preserve reproducibility, traceability, and scientific intent as data, assays, and models evolve over time.A central theme of the book is the critical distinction between discovery and translational phases. Discovery research benefits from flexibility, exploration, and rapid learning, while translational research demands stability, comparability, and defensibility. Applying uniform automation strategies across these phases introduces hidden risk either constraining learning too early or allowing fragile evidence to inform high-impact decisions. This book shows how automation strategies should mature alongside evidence, tightening controls while maintaining agility where it matters most.The early chapters establish foundational principles for evidence-grade automation, including metadata-first design, automated quality gates, and workflow orchestration. Research data pipelines are reframed not as simple data movement mechanisms, but as evidence pipelines that transform raw experimental outputs into reusable, analysis-ready data products suitable for scalable analytics and AI.The book then explores how automated pipelines support reproducibility, cross-study learning, and reliable downstream reuse. It demonstrates how structured metadata, standardized curation layers, and versioned datasets reduce manual rework while strengthening confidence in analytical outcomes.Assay optimization is presented as a pivotal link between data infrastructure and biological insight. The book examines how AI-driven techniques such as predictive quality control, anomaly detection, parameter tuning, and active learning can improve assay robustness and learning efficiency when applied with translational intent. Rather than optimizing technical metrics in isolation, the emphasis remains on generating assay evidence that meaningfully supports target identification, biomarker discovery, and drug repurposing.Operationalizing AI is a major focus. Models in pharmaceutical R&D are not static assets deployed into stable environments; they are evolving hypotheses interacting with changing data, protocols, and scientific understanding. The book introduces a lifecycle-aware approach to AI build, validate, deploy, monitor, and improve supported by dataset, feature, and model versioning, automated run metadata capture, discovery-aware monitoring, and structured human-in-the-loop review workflows.Throughout, the book avoids vendor-specific solutions and algorithmic hype. Instead, it provides durable, technology-agnostic patterns, practical checklists, common failure modes, assay metrics, and a glossary tailored to pharmaceutical R&D contexts.Written for pharmaceutical R&D professionals, translational scientists, data engineers, applied AI teams, and R&D leaders, this book is intended to help organizations move beyond experimental AI adoption. By grounding automation in evidence-grade principles, it shows how AI can become a sustainable scientific capability accelerating innovation while strengthening the credibi Shipping may be from multiple locations in the US or from the UK, depending on stock availability.

  • Rama Devi Drakshpalli

    Language: English

    Published by Independently Published, 2025

    ISBN 13: 9798279329304

    Seller: CitiRetail, Stevenage, United Kingdom

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    Paperback. Condition: new. Paperback. Artificial intelligence, machine learning, and advanced automation are increasingly shaping pharmaceutical research and development. Yet despite significant investment and technical progress, many organizations struggle to translate AI-driven innovation into sustained, trustworthy impact-particularly in precision medicine, where scientific decisions depend on the continuity, quality, and integrity of evidence across discovery and translational research.AI- and Data Science-Driven Automation for Pharmaceutical R&D in Precision Medicine addresses this challenge by introducing an evidence-grade approach to automation. Rather than focusing on algorithms, tools, or vendor platforms, the book examines how AI and data science must be embedded within research workflows that preserve reproducibility, traceability, and scientific intent as data, assays, and models evolve over time.A central theme of the book is the critical distinction between discovery and translational phases. Discovery research benefits from flexibility, exploration, and rapid learning, while translational research demands stability, comparability, and defensibility. Applying uniform automation strategies across these phases introduces hidden risk either constraining learning too early or allowing fragile evidence to inform high-impact decisions. This book shows how automation strategies should mature alongside evidence, tightening controls while maintaining agility where it matters most.The early chapters establish foundational principles for evidence-grade automation, including metadata-first design, automated quality gates, and workflow orchestration. Research data pipelines are reframed not as simple data movement mechanisms, but as evidence pipelines that transform raw experimental outputs into reusable, analysis-ready data products suitable for scalable analytics and AI.The book then explores how automated pipelines support reproducibility, cross-study learning, and reliable downstream reuse. It demonstrates how structured metadata, standardized curation layers, and versioned datasets reduce manual rework while strengthening confidence in analytical outcomes.Assay optimization is presented as a pivotal link between data infrastructure and biological insight. The book examines how AI-driven techniques such as predictive quality control, anomaly detection, parameter tuning, and active learning can improve assay robustness and learning efficiency when applied with translational intent. Rather than optimizing technical metrics in isolation, the emphasis remains on generating assay evidence that meaningfully supports target identification, biomarker discovery, and drug repurposing.Operationalizing AI is a major focus. Models in pharmaceutical R&D are not static assets deployed into stable environments; they are evolving hypotheses interacting with changing data, protocols, and scientific understanding. The book introduces a lifecycle-aware approach to AI build, validate, deploy, monitor, and improve supported by dataset, feature, and model versioning, automated run metadata capture, discovery-aware monitoring, and structured human-in-the-loop review workflows.Throughout, the book avoids vendor-specific solutions and algorithmic hype. Instead, it provides durable, technology-agnostic patterns, practical checklists, common failure modes, assay metrics, and a glossary tailored to pharmaceutical R&D contexts.Written for pharmaceutical R&D professionals, translational scientists, data engineers, applied AI teams, and R&D leaders, this book is intended to help organizations move beyond experimental AI adoption. By grounding automation in evidence-grade principles, it shows how AI can become a sustainable scientific capability accelerating innovation while strengthenin Shipping may be from our UK warehouse or from our Australian or US warehouses, depending on stock availability.

  • Rama Devi Drakshpalli

    Language: English

    Published by Amazon Digital Services LLC - Kdp, 2025

    ISBN 13: 9798279329304

    Seller: PBShop.store US, Wood Dale, IL, U.S.A.

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    PAP. Condition: New. New Book. Shipped from UK. THIS BOOK IS PRINTED ON DEMAND. Established seller since 2000.

  • Rama Devi Drakshpalli

    Language: English

    Published by Amazon Digital Services LLC - Kdp, 2025

    ISBN 13: 9798279329304

    Seller: PBShop.store UK, Fairford, GLOS, United Kingdom

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    PAP. Condition: New. New Book. Delivered from our UK warehouse in 4 to 14 business days. THIS BOOK IS PRINTED ON DEMAND. Established seller since 2000.

  • Language: English

    Published by Academic Press, 2026

    ISBN 10: 0443365547 ISBN 13: 9780443365546

    Seller: Majestic Books, Hounslow, United Kingdom

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    £ 140.59

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  • Boubaker, Olfa (Editor)/ Boussarsar, Mohamed (Editor)

    Language: English

    Published by Academic Pr, 2026

    ISBN 10: 0443365547 ISBN 13: 9780443365546

    Seller: Revaluation Books, Exeter, United Kingdom

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    £ 136.99

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    Paperback. Condition: Brand New. 450 pages. 9.25x7.50x9.25 inches. In Stock.

  • Language: English

    Published by Academic Press, 2026

    ISBN 10: 0443365547 ISBN 13: 9780443365546

    Seller: Books Puddle, New York, NY, U.S.A.

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    £ 155.69

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  • Language: English

    Published by Academic Press, 2026

    ISBN 10: 0443365547 ISBN 13: 9780443365546

    Seller: Biblios, Frankfurt am main, HESSE, Germany

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    £ 163.34

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  • Olfa Boubaker

    Language: English

    Published by Elsevier Science Publishing Co Inc, San Diego, 2026

    ISBN 10: 0443365547 ISBN 13: 9780443365546

    Seller: CitiRetail, Stevenage, United Kingdom

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    Paperback. Condition: new. Paperback. AI and Data Science in Precision Medicine, Predictive Analytics, and Medical Practice examines the transformative role of AI and data science in improving diagnosis, treatment, and healthcare delivery. It shows how machine learning, deep learning, and advanced signal and image analysis enable breakthroughs in genomics, multi-omics integration, biomedical imaging, EEG-based seizure prediction, and real-time physiological monitoring. The book highlights AI-driven stratification of complex syndromes such as sepsis, stroke, and acute respiratory distress syndrome, demonstrating how data-driven models support early detection, personalized interventions, and actionable clinical decisions.The volume also presents system-level innovations, including AI-based forecasting for dialysis, blood supply management, and telemedicine optimization. It addresses ethical and regulatory challenges, fairness, transparency, data governance, and clinical validation, providing a practical roadmap for healthcare professionals, engineers, researchers, and policymakers. By integrating responsible, human-centered AI into precision medicine, the book illustrates clear pathways to enhance patient care, improve outcomes, and promote equitable healthcare. This item is printed on demand. Shipping may be from our UK warehouse or from our Australian or US warehouses, depending on stock availability.