AI for Medical Laboratory Scientists: Artificial Intelligence and Machine Learning for Laboratory Medicine

Transform Your Laboratory Practice with Artificial Intelligence and Machine Learning

Clinical laboratories stand at the forefront of a technological revolution. Artificial intelligence is reshaping every aspect of laboratory medicine-from automated cell classification and predictive quality control to intelligent result interpretation and clinical decision support. Yet most laboratory professionals lack the knowledge needed to understand, implement, and optimize these powerful tools.

AI for Medical Laboratory Scientists: Artificial Intelligence and Machine Learning for Laboratory Medicine bridges this critical gap. This comprehensive textbook provides medical laboratory scientists, pathologists, laboratory directors, and medical technologists with practical, accessible guidance on AI applications across all laboratory disciplines.

Master AI fundamentals without programming knowledge. Learn essential concepts including machine learning, deep learning, and neural networks through laboratory-specific examples. Understand supervised versus unsupervised learning, training data requirements, algorithm validation, and performance metrics-all explained in plain language for non-programmers.

Explore AI applications across laboratory disciplines. Discover how machine learning enhances clinical chemistry automation, digital pathology image analysis, hematology cell classification, microbiology pathogen identification, molecular diagnostics interpretation, and laboratory informatics optimization. Each chapter provides detailed case studies demonstrating real-world implementations.

Implement AI successfully in your laboratory. Follow step-by-step guidance covering readiness assessment, vendor evaluation, workflow integration, staff training, regulatory compliance (FDA, CLIA, CAP), validation protocols, and ongoing performance monitoring. Learn from detailed case studies highlighting both successes and failures.

Navigate ethical and regulatory requirements. Understand FDA frameworks for AI medical devices, CLIA validation requirements, CAP accreditation standards, bias detection strategies, patient privacy considerations, and liability issues. Address algorithmic fairness and health equity concerns proactively.

Prepare for laboratory medicine's AI-enabled future. Explore emerging technologies including quantum computing, edge AI, and federated learning. Understand changing roles for laboratory professionals and identify career opportunities in AI-enabled laboratories.

What You'll Learn:

AI and machine learning fundamentals explained for laboratory professionals

Automated result validation and intelligent delta check optimization

Digital pathology with computer vision and convolutional neural networks

Machine learning applications in hematology, microbiology, and molecular diagnostics

Laboratory informatics, data analytics, and clinical decision support systems

Real-time quality control and predictive maintenance strategies

Implementation planning, vendor selection, and change management

Validation methodologies, performance metrics, and bias detection

Regulatory compliance including FDA, CLIA, and CAP requirements

Practical project examples with step-by-step implementation guides

Who This Book Is For:

Medical laboratory scientists seeking AI literacy for career advancement. Laboratory directors evaluating AI implementations. Medical technologists updating technical skills. Pathologists integrating digital pathology systems. MLS/MLT students preparing for AI-integrated practice. Laboratory managers optimizing workflows with machine learning. Clinical laboratory educators developing AI curriculum.

1148453891
AI for Medical Laboratory Scientists: Artificial Intelligence and Machine Learning for Laboratory Medicine

Transform Your Laboratory Practice with Artificial Intelligence and Machine Learning

Clinical laboratories stand at the forefront of a technological revolution. Artificial intelligence is reshaping every aspect of laboratory medicine-from automated cell classification and predictive quality control to intelligent result interpretation and clinical decision support. Yet most laboratory professionals lack the knowledge needed to understand, implement, and optimize these powerful tools.

AI for Medical Laboratory Scientists: Artificial Intelligence and Machine Learning for Laboratory Medicine bridges this critical gap. This comprehensive textbook provides medical laboratory scientists, pathologists, laboratory directors, and medical technologists with practical, accessible guidance on AI applications across all laboratory disciplines.

Master AI fundamentals without programming knowledge. Learn essential concepts including machine learning, deep learning, and neural networks through laboratory-specific examples. Understand supervised versus unsupervised learning, training data requirements, algorithm validation, and performance metrics-all explained in plain language for non-programmers.

Explore AI applications across laboratory disciplines. Discover how machine learning enhances clinical chemistry automation, digital pathology image analysis, hematology cell classification, microbiology pathogen identification, molecular diagnostics interpretation, and laboratory informatics optimization. Each chapter provides detailed case studies demonstrating real-world implementations.

Implement AI successfully in your laboratory. Follow step-by-step guidance covering readiness assessment, vendor evaluation, workflow integration, staff training, regulatory compliance (FDA, CLIA, CAP), validation protocols, and ongoing performance monitoring. Learn from detailed case studies highlighting both successes and failures.

Navigate ethical and regulatory requirements. Understand FDA frameworks for AI medical devices, CLIA validation requirements, CAP accreditation standards, bias detection strategies, patient privacy considerations, and liability issues. Address algorithmic fairness and health equity concerns proactively.

Prepare for laboratory medicine's AI-enabled future. Explore emerging technologies including quantum computing, edge AI, and federated learning. Understand changing roles for laboratory professionals and identify career opportunities in AI-enabled laboratories.

What You'll Learn:

AI and machine learning fundamentals explained for laboratory professionals

Automated result validation and intelligent delta check optimization

Digital pathology with computer vision and convolutional neural networks

Machine learning applications in hematology, microbiology, and molecular diagnostics

Laboratory informatics, data analytics, and clinical decision support systems

Real-time quality control and predictive maintenance strategies

Implementation planning, vendor selection, and change management

Validation methodologies, performance metrics, and bias detection

Regulatory compliance including FDA, CLIA, and CAP requirements

Practical project examples with step-by-step implementation guides

Who This Book Is For:

Medical laboratory scientists seeking AI literacy for career advancement. Laboratory directors evaluating AI implementations. Medical technologists updating technical skills. Pathologists integrating digital pathology systems. MLS/MLT students preparing for AI-integrated practice. Laboratory managers optimizing workflows with machine learning. Clinical laboratory educators developing AI curriculum.

17.49 In Stock
AI for Medical Laboratory Scientists: Artificial Intelligence and Machine Learning for Laboratory Medicine

AI for Medical Laboratory Scientists: Artificial Intelligence and Machine Learning for Laboratory Medicine

by Maurice Alexander Marshall
AI for Medical Laboratory Scientists: Artificial Intelligence and Machine Learning for Laboratory Medicine

AI for Medical Laboratory Scientists: Artificial Intelligence and Machine Learning for Laboratory Medicine

by Maurice Alexander Marshall

Paperback

$17.49 
  • SHIP THIS ITEM
    In stock. Ships in 1-2 days.
  • PICK UP IN STORE

    Your local store may have stock of this item.

Related collections and offers


Overview

Transform Your Laboratory Practice with Artificial Intelligence and Machine Learning

Clinical laboratories stand at the forefront of a technological revolution. Artificial intelligence is reshaping every aspect of laboratory medicine-from automated cell classification and predictive quality control to intelligent result interpretation and clinical decision support. Yet most laboratory professionals lack the knowledge needed to understand, implement, and optimize these powerful tools.

AI for Medical Laboratory Scientists: Artificial Intelligence and Machine Learning for Laboratory Medicine bridges this critical gap. This comprehensive textbook provides medical laboratory scientists, pathologists, laboratory directors, and medical technologists with practical, accessible guidance on AI applications across all laboratory disciplines.

Master AI fundamentals without programming knowledge. Learn essential concepts including machine learning, deep learning, and neural networks through laboratory-specific examples. Understand supervised versus unsupervised learning, training data requirements, algorithm validation, and performance metrics-all explained in plain language for non-programmers.

Explore AI applications across laboratory disciplines. Discover how machine learning enhances clinical chemistry automation, digital pathology image analysis, hematology cell classification, microbiology pathogen identification, molecular diagnostics interpretation, and laboratory informatics optimization. Each chapter provides detailed case studies demonstrating real-world implementations.

Implement AI successfully in your laboratory. Follow step-by-step guidance covering readiness assessment, vendor evaluation, workflow integration, staff training, regulatory compliance (FDA, CLIA, CAP), validation protocols, and ongoing performance monitoring. Learn from detailed case studies highlighting both successes and failures.

Navigate ethical and regulatory requirements. Understand FDA frameworks for AI medical devices, CLIA validation requirements, CAP accreditation standards, bias detection strategies, patient privacy considerations, and liability issues. Address algorithmic fairness and health equity concerns proactively.

Prepare for laboratory medicine's AI-enabled future. Explore emerging technologies including quantum computing, edge AI, and federated learning. Understand changing roles for laboratory professionals and identify career opportunities in AI-enabled laboratories.

What You'll Learn:

AI and machine learning fundamentals explained for laboratory professionals

Automated result validation and intelligent delta check optimization

Digital pathology with computer vision and convolutional neural networks

Machine learning applications in hematology, microbiology, and molecular diagnostics

Laboratory informatics, data analytics, and clinical decision support systems

Real-time quality control and predictive maintenance strategies

Implementation planning, vendor selection, and change management

Validation methodologies, performance metrics, and bias detection

Regulatory compliance including FDA, CLIA, and CAP requirements

Practical project examples with step-by-step implementation guides

Who This Book Is For:

Medical laboratory scientists seeking AI literacy for career advancement. Laboratory directors evaluating AI implementations. Medical technologists updating technical skills. Pathologists integrating digital pathology systems. MLS/MLT students preparing for AI-integrated practice. Laboratory managers optimizing workflows with machine learning. Clinical laboratory educators developing AI curriculum.


Product Details

ISBN-13: 9781923604797
Publisher: Jstone Publishing
Publication date: 10/01/2025
Pages: 232
Product dimensions: 6.00(w) x 9.00(h) x 0.49(d)
From the B&N Reads Blog

Customer Reviews