Privacy and Security in AI-Driven Mental Health Apps
Privacy and Security in AI-Driven Mental Health Apps
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Author(s): Kumari, Shabnam
ISBN No.: 9781041079002
Pages: 392
Year: 202608
Format: Trade Cloth (Hard Cover)
Price: $ 196.00
Dispatch delay: Dispatched between 7 to 15 days
Status: Available (Forthcoming)

PART I: FOUNDATIONS AND CONTEXT. Chapter 1: The Role of Artificial Intelligence in Modern Mental Health Care. Abstract. Introduction. Literature Review. Introduction to AI in Healthcare. Evolution of AI in Mental Health and Psychiatry. Global Mental Health Gaps and Digital Opportunities.


AI in Diagnostics, Therapy, and Monitoring. Benefits and Limitations of AI-Based Interventions. Cultural, Societal, and Ethical Implications. Patient Trust, Engagement, and Acceptance. Research Challenges and Future Outlook. Summary. References. Chapter 2: The Digital Transformation of Mental Health Services.


Abstract. Introduction. Literature Review. From Traditional Therapy to Digital Platforms. Growth of Telepsychiatry and Mental Health Apps. Role of Wearables and IoT in Emotional Sensing. Digital Therapeutics (DTx): Evidence and Impact. Personalization through AI and Data Analytics.


Addressing the Digital Divide. Accessibility Challenges in Low-Resource Settings. Integration with Clinical Psychology and Psychiatry. Future Trends in Digital Ecosystems. Summary. References. Chapter 3: Data Privacy and Security in AI-Driven Mental Health Ecosystems. Abstract.


Introduction. Literature Review. Sensitivity of Mental Health Data. Data Lifecycle: Collection to Use. Common Vulnerabilities and Threats. Privacy-Accessibility Trade-offs. Ownership, Consent, and Data Governance. Encryption and Access Control Mechanisms.


Data Minimization and Retention Policies. Privacy Enhancements in Therapeutic Platforms. Policy Integration and Recommendations. Summary. References. Chapter 4: Ethical, Legal, and Regulatory Frameworks in AI Mental Health. Abstract. Introduction.


Literature Review. Ethical Foundations (Beneficence, Justice, Non-Maleficence). Legal Standards and Case Studies. Informed Consent and Digital Autonomy. Transparency in Algorithmic Decision-Making. Major Regulatory Frameworks: GDPR, HIPAA, etc. Data Localization and Sovereignty Issues. Oversight, Auditing, and Compliance Models.


Cross-Border Data Harmonization. Policy Gaps and Emerging Global Trends. Summary. References. PART II: TECHNICAL FOUNDATIONS AND DATA MANAGEMENT. Chapter 5: AI Models and Algorithms for Mental Health Applications. Abstract. Introduction.


Literature Review. Machine Learning and Deep Learning Foundations. NLP in Chatbots and Cognitive Therapy Tools. Emotion and Sentiment Recognition Techniques. Predictive Modeling for Behavioral Insights. Explainable AI (XAI) and Model Transparency. Ethical and Secure Model Training Practices. Bias and Fairness in AI Psychiatry.


Model Deployment and Continuous Monitoring. Evaluation Metrics and Case Studies. Summary. References. Chapter 6: Secure Data Infrastructure and System Architecture. Abstract. Introduction. Literature Review.


Secure Cloud and Hybrid Architectures. SSL/TLS, PKI, and Encryption Standards. Data Authentication and Access Control. Backup, Recovery, and Data Integrity Mechanisms. Metadata and Data Provenance. Distributed Storage and Traceability. Cloud and Edge Threat Landscape. Building Resilient AI Data Pipelines.


Continuous Security Assurance. Summary. References. Chapter 7: Privacy-Preserving Data Processing and Sharing. Abstract. Introduction. Literature Review. Principles of Data Anonymization and Minimization.


K-Anonymity, Differential Privacy, and Federated Techniques. Secure Multiparty Computation and Homomorphic Encryption. Synthetic Data Generation for Research. Balancing Privacy and Data Utility. Risks of De-Identification and Mitigation. Integrating Privacy-Preserving ML. Practical Implementation in Healthcare. Future Directions in Secure Data Sharing.


Summary. References. Chapter 8: Federated Learning and Edge Computing for Mental Health AI. Abstract. Introduction. Literature Review. Fundamentals of Federated Learning. Architecture and Workflow.


Edge AI for Real-Time Behavioral Insights. Differential Privacy in Federated Contexts. Communication and Aggregation Challenges. Blockchain Integration for Transparency. Comparative Analysis: Centralized vs. Federated. Case Studies: Monitoring and Prediction Systems. Emerging Decentralized Models.


Summary. References. PART III: PRIVACY RISKS, ETHICS, AND TRUST. Chapter 9: Risk Assessment and Threat Modeling in AI Mental Health. Abstract. Introduction. Literature Review. Threat Modeling Fundamentals.


Risk Classification and Evaluation Frameworks. Common Attacks: Phishing, Ransomware, API Exploits. Insider vs. External Threat Analysis. Integration of Threat Intelligence Systems. Quantitative and Qualitative Risk Models. Vulnerability Management Tools. Incident Prevention and Continuous Monitoring.


Security Certification and Best Practices. Summary. References. Chapter 10: Data Breaches, User Trust, and Psychological Safety. Abstract. Introduction. Literature Review. Overview of Data Breach Incidents.


Anatomy and Lifecycle of Cyberattacks. Psychological and Emotional Fallout for Users. Communication and Crisis Management. Legal Duties and Ethical Obligations. Post-Breach Forensics and Analysis. Restoring Trust through Transparency. Cyber Insurance and Organizational Resilience. Case-Based Lessons and Policy Implications.


Summary. References. Chapter 11: Bias, Fairness, and Cultural Sensitivity in AI Systems. Abstract. Introduction. Literature Review. Types and Sources of Bias. Data Imbalance and Representation Issues.


Algorithmic Discrimination and Social Impacts. Fairness Metrics and Evaluation Techniques. Culturally Aware and Inclusive AI Design. Ethical and Legal Responses to Bias. Transparency and Auditing for Equity. Building Diverse Datasets for Global Contexts. Accountability in AI Development. Summary.


References. Chapter 12: Ethical and Psychological Implications of AI Surveillance. Abstract. Introduction. Literature Review. Digital Surveillance in Clinical Contexts. Emotional and Behavioral Data Collection. Balancing Safety and Privacy.


Consent, Autonomy, and Boundaries. Psychological Impact of Constant Observation. Human Oversight in AI Systems. Ethics of Monitoring Vulnerable Populations. Policy Frameworks for Responsible Use. Managing Data Sensitivity and Control. Summary. References.


PART IV: GOVERNANCE, TRANSPARENCY, AND ACCOUNTABILITY. Chapter 13: Explainable AI and Transparency in Clinical Decision-Making. Abstract. Introduction. Literature Review. Foundations of Explainable AI (XAI). Importance in Mental Health Diagnosis. Visualization and Interpretability Techniques.


Communicating AI Logic to Clinicians. Balancing IP Protection and Transparency. Trust Metrics and Governance Indicators. Human-AI Collaboration in Care Delivery. Role of Policy and Public Trust. Standards for Responsible Disclosure. Summary. References.


Chapter 14: Digital Consent, Autonomy, and Identity Management. Abstract. Introduction. Literature Review. Principles of Digital Consent. Authentication and Identity Verification. Blockchain and Decentralized Identity (DID). Legal Perspectives on Consent and Data Rights.


User Empowerment through Data Portability. Designing User-Centric Consent Systems. Managing Consent Lifecycle in AI Apps. Case Studies: Secure Consent Management. Future Pathways for Ethical Identity Systems. Summary. References. Chapter 15: Accountability, Auditing, and Compliance Mechanisms.


Abstract. Introduction. Literature Review. Defining Accountability in AI Decision Systems. Role of Audit Trails and Provenance Tracking. Third-Party Certification and Verification. Liability and Legal Responsibility. Continuous Compliance Monitoring.


Oversight Committees and Ethics Boards. Transparency Reports and Documentation. Legal Remedies and Redress Frameworks. Future of Algorithmic Accountability. Summary. References. PART V: FUTURE DIRECTIONS. Chapter 16: Balancing Innovation, Ethics, and Security in the Future of AI Mental Health.


Abstract. Introduction. Literature Review. Emerging Trends in AI Psychiatry. Integration with VR, AR, and Emotional AI. Green AI and Sustainable Computing. Ethical Innovation Models in Healthcare. Workforce Training for AI Readiness.


Global Policy Collaboration for AI Ethics. Building Secure, Human-Centered AI Ecosystems. Long-Term Governance and Security Outlook. Balancing Innovation with Privacy Preservation. Summary. References. Chapter 17: Conclusion of the book.


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