Bioinformatics tools for pharmaceutical drug product development
Otros Autores: | , , |
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Formato: | Libro electrónico |
Idioma: | Inglés |
Publicado: |
Hoboken, NJ :
Wiley
℗2023.
|
Materias: | |
Ver en Biblioteca Universitat Ramon Llull: | https://discovery.url.edu/permalink/34CSUC_URL/1im36ta/alma991009752728306719 |
Tabla de Contenidos:
- Cover
- Title Page
- Copyright Page
- Contents
- Preface
- Part I: Bioinformatics Tools
- Chapter 1 Introduction to Bioinformatics, AI, and ML for Pharmaceuticals
- 1.1 Introduction
- 1.2 Bioinformatics
- 1.2.1 Limitations of Bioinformatics
- 1.2.2 Artificial Intelligence (AI)
- 1.3 Machine Learning (ML)
- 1.3.1 Applications of ML
- 1.3.2 Limitations of ML
- 1.4 Conclusion and Future Prospects
- References
- Chapter 2 Artificial Intelligence and Machine Learning-Based New Drug Discovery Process with Molecular Modelling
- 2.1 Introduction
- 2.2 Artificial Intelligence in Drug Discovery
- 2.2.1 Training Dataset Used in Medicinal Chemistry
- 2.2.2 Availability and Quality of Initial Data
- 2.3 AI in Virtual Screening
- 2.4 AI for De Novo Design
- 2.5 AI for Synthesis Planning
- 2.6 AI in Quality Control and Quality Assurance
- 2.7 AI-Based Advanced Applications
- 2.7.1 Micro/Nanorobot Targeted Drug Delivery System
- 2.7.2 AI in Nanomedicine
- 2.7.3 Role of AI in Market Prediction
- 2.8 Discussion and Future Perspectives
- 2.9 Conclusion
- References
- Chapter 3 Role of Bioinformatics in Peptide-Based Drug Design and Its Serum Stability
- 3.1 Introduction
- 3.2 Points to be Considered for Peptide-Based Delivery
- 3.3 Overview of Peptide-Based Drug Delivery System
- 3.4 Tools for Screening of Peptide Drug Candidate
- 3.5 Various Strategies to Increase Serum Stability of Peptide
- 3.5.1 Cyclization of Peptide
- 3.5.2 Incorporation of D Form of Amino Acid
- 3.5.3 Terminal Modification
- 3.5.4 Substitution of Amino Acid Which is Not Natural
- 3.5.5 Stapled Peptides
- 3.5.6 Synthesis of Stapled Peptides
- 3.6 Method/Tools for Serum Stability Evaluation
- 3.7 Conclusion
- 3.8 Future Prospects
- References
- Chapter 4 Data Analytics and Data Visualization for the Pharmaceutical Industry
- 4.1 Introduction.
- 4.2 Data Analytics
- 4.3 Data Visualization
- 4.4 Data Analytics and Data Visualization for Formulation Development
- 4.5 Data Analytics and Data Visualization for Drug Product Development
- 4.6 Data Analytics and Data Visualization for Drug Product Life Cycle Management
- 4.7 Conclusion and Future Prospects
- References
- Chapter 5 Mass Spectrometry, Protein Interaction and Amalgamation of Bioinformatics
- 5.1 Introduction
- 5.2 Mass Spectrometry - Protein Interaction
- 5.2.1 The Prerequisites
- 5.2.2 Finding Affinity Partner (The Bait)
- 5.2.3 Antibody-Based Affinity Tags
- 5.2.4 Small Molecule Ligands
- 5.2.5 Fusion Protein-Based Affinity Tags
- 5.3 MS Analysis
- 5.4 Validating Specific Interactions
- 5.5 Mass Spectrometry - Qualitative and Quantitative Analysis
- 5.6 Challenges Associated with Mass Analysis
- 5.7 Relative vs. Absolute Quantification
- 5.8 Mass Spectrometry - Lipidomics and Metabolomics
- 5.9 Mass Spectrometry - Drug Discovery
- 5.10 Conclusion and Future Scope
- 5.11 Resources and Software
- Acknowledgement
- References
- Chapter 6 Applications of Bioinformatics Tools in Medicinal Biology and Biotechnology
- 6.1 Introduction
- 6.2 Bioinformatics Tools
- 6.3 The Genetic Basis of Diseases
- 6.4 Proteomics
- 6.5 Transcriptomic
- 6.6 Cancer
- 6.7 Diagnosis
- 6.8 Drug Discovery and Testing
- 6.9 Molecular Medicines
- 6.10 Personalized (Precision) Medicines
- 6.11 Vaccine Development and Drug Discovery in Infectious Diseases and COVID-19 Pandemic
- 6.12 Prognosis of Ailments
- 6.13 Concluding Remarks and Future Prospects
- Acknowledgement
- References
- Chapter 7 Clinical Applications of "Omics" Technology as a Bioinformatic Tool
- Abbreviations
- 7.1 Introduction
- 7.2 Execution Method
- 7.3 Overview of Omics Technology
- 7.4 Genomics
- 7.5 Nutrigenomics
- 7.6 Transcriptomics.
- 7.7 Proteomics
- 7.8 Metabolomics
- 7.9 Lipomics or Lipidomics
- 7.10 Ayurgenomics
- 7.11 Pharmacogenomics
- 7.12 Toxicogenomic
- 7.13 Conclusion and Future Prospects
- Acknowledgement
- References
- Part II: Bioinformatics Tools for Pharmaceutical Sector
- Chapter 8 Bioinformatics and Cheminformatics Tools in Early Drug Discovery
- Abbreviations
- 8.1 Introduction
- 8.2 Informatics and Drug Discovery
- 8.3 Computational Methods in Drug Discovery
- 8.3.1 Homology Modeling
- 8.3.2 Docking Studies
- 8.3.3 Molecular Dynamics Simulations
- 8.3.4 De Novo Drug Design
- 8.3.5 Quantitative Structure Activity Relationships
- 8.3.6 Pharmacophore Modeling
- 8.3.7 Absorption, Distribution, Metabolism, Excretion and Toxicity Profiling
- 8.4 Conclusion
- References
- Chapter 9 Artificial Intelligence and Machine Learning-Based Formulation and Process Development for Drug Products
- 9.1 Introduction
- 9.2 Current Scenario in Pharma Industry and Quality by Design (QbD)
- 9.3 AI- and ML-Based Formulation Development
- 9.4 AI- and ML-Based Process Development and Process Characterization
- 9.5 Concluding Remarks and Future Prospects
- References
- Chapter 10 Artificial Intelligence and Machine Learning-Based Manufacturing and Drug Product Marketing
- Abbreviations
- 10.1 Introduction to Artificial Intelligence and Machine Learning
- 10.1.1 AI and ML in Pharmaceutical Manufacturing
- 10.1.2 AI and ML in Drug Product Marketing
- 10.2 Different Applications of AI and ML in the Pharma Field
- 10.2.1 Drug Discovery
- 10.2.2 Pharmaceutical Product Development
- 10.2.3 Clinical Trial Design
- 10.2.4 Manufacturing of Drugs
- 10.2.5 Quality Control and Quality Assurance
- 10.2.6 Product Management
- 10.2.7 Drug Prescription
- 10.2.8 Medical Diagnosis
- 10.2.9 Monitoring of Patients
- 10.2.10 Drug Synergism and Antagonism Prediction.
- 10.2.11 Precision Medicine
- 10.3 AI and ML-Based Manufacturing
- 10.3.1 Continuous Manufacturing
- 10.3.2 Process Improvement and Fault Detection
- 10.3.3 Predictive Maintenance (PdM)
- 10.3.4 Quality Control and Yield
- 10.3.5 Troubleshooting
- 10.3.6 Supply Chain Management
- 10.3.7 Warehouse Management
- 10.3.8 Predicting Remaining Useful Life
- 10.3.9 Challenges
- 10.4 AI and ML-Based Drug Product Marketing
- 10.4.1 Product Launch
- 10.4.2 Real-Time Personalization and Consumer Behavior
- 10.4.3 Better Customer Relationships
- 10.4.4 Enhanced Marketing Measurement
- 10.4.5 Predictive Marketing Analytics
- 10.4.6 Price Dynamics
- 10.4.7 Market Segmentation
- 10.4.8 Challenges
- 10.5 Future Prospects and Way Forward
- 10.6 Conclusion
- References
- Chapter 11 Artificial Intelligence and Machine Learning Applications in Vaccine Development
- 11.1 Introduction
- 11.2 Prioritizing Proteins as Vaccine Candidates
- 11.3 Predicting Binding Scores of Candidate Proteins
- 11.4 Predicting Potential Epitopes
- 11.5 Design of Multi-Epitope Vaccine
- 11.6 Tracking the RNA Mutations of a Virus
- Conclusion
- References
- Chapter 12 AI, ML and Other Bioinformatics Tools for Preclinical and Clinical Development of Drug Products
- Abbreviations
- 12.1 Introduction
- 12.2 AI and ML for Pandemic
- 12.3 Advanced Analytical Tools Used in Preclinical and Clinical Development
- 12.3.1 Spectroscopic Techniques
- 12.3.2 Chromatographic Techniques
- 12.3.3 Electrochemical Techniques
- 12.3.4 Electrophoretic Techniques
- 12.3.5 Hyphenated Techniques
- 12.4 AI, ML, and Other Bioinformatics Tools for Preclinical Development of Drug Products
- 12.4.1 Various Computational Tools Used in Pre-Clinical Drug Development
- 12.5 AI, ML, and Other Bioinformatics Tools for Clinical Development of Drug Products.
- 12.5.1 Role of AI, ML, and Bioinformatics in Clinical Research
- 12.5.2 Role of AI and ML in Clinical Study Protocol Optimization
- 12.5.3 Role of AI and ML in the Management of Clinical Trial Participants
- 12.5.4 Role of AI and ML in Clinical Trial Data Collection and Management
- 12.6 Way Forward
- 12.7 Conclusion
- References
- Part III: Bioinformatics Tools for Healthcare Sector
- Chapter 13 Artificial Intelligence and Machine Learning in Healthcare Sector
- Abbreviations
- 13.1 Introduction
- 13.2 The Exponential Rise of AI/ML Solutions in Healthcare
- 13.3 AI/ML Healthcare Solutions for Doctors
- 13.4 AI/ML Solution for Patients
- 13.5 AI Solutions for Administrators
- 13.6 Factors Affecting the AI/ML Implementation in the Healthcare Sector
- 13.6.1 High Cost
- 13.6.2 Lack of Creativity
- 13.6.3 Errors Potentially Harming Patients
- 13.6.4 Privacy Issues
- 13.6.5 Increase in Unemployment
- 13.6.6 Lack of Ethics
- 13.6.7 Promotes a Less-Effort Culture Among Human Workers
- 13.7 AI/ML Based Healthcare Start-Ups
- 13.8 Opportunities and Risks for Future
- 13.8.1 Patient Mobility Monitoring
- 13.8.2 Clinical Trials for Drug Development
- 13.8.3 Quality of Electronic Health Records (EHR)
- 13.8.4 Robot-Assisted Surgery
- 13.9 Conclusion and Perspectives
- References
- Chapter 14 Role of Artificial Intelligence in Machine Learning for Diagnosis and Radiotherapy
- Abbreviations
- 14.1 Introduction
- 14.2 Machine Learning Algorithm Models
- 14.2.1 Supervised Learning
- 14.2.2 Unsupervised Learning
- 14.2.3 Semi-Supervised Learning
- 14.2.4 Reinforcement Learning (RL)
- 14.3 Artificial Learning in Radiology
- 14.3.1 Types of Radiation Therapy
- 14.3.1.1 External Radiation Therapy
- 14.3.1.2 Internal Radiation Therapy
- 14.3.1.3 Systemic Radiation Therapy
- 14.3.2 Mechanism of Action.
- 14.4 Application of Artificial Intelligence and Machine Learning in Radiotherapy.