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Welcome
DATA STANDARDIZATION AND ACCELERATED STUDY
SETUP : THE POWER OF AI AND ML.
SYED ABDUL KHADEER ALI
B-PHARMACY
STUDENT ID:- CLS_048/052024
10/06/2024
www.clinosol.com | follow us on social media
@clinosolresearch
1
Index
• INTRODUCTION
• WHAT ARE CLINICAL TRAILS
• DATA STANDARDIZATION IN CLINICAL RESEARCH
• TRADITIONAL CHALLENGES IN STUDY SETUP
• ENTER AI AND MACHINE LEARNING
• AI-POWERED DATA STANDARDIZATION
• ACCELERATING STUDY SETUP WITH ML
• CASE STUDY
• FUTURE PROSPECTS
• CHALLENGES AND CONSIDERATIONS
• CONCLUSION
10/06/2024
www.clinosol.com | follow us on social media
@clinosolresearch
2
INTRODUCTION
10/06/2024
www.clinosol.com | follow us on social media
@clinosolresearch
3
Welcome to the presentation on DATA
STANDARDIZATION AND
ACCELERATED STUDY SETUP : THE
POWER OF AI & ML.
- Clinical research faces challenges in data
management and study efficiency.
- Data inconsistencies and lengthy setup
times hinder progress.
- Data standardization is crucial for
comparing and aggregating study results.
- AI and ML offer promising solutions to
streamline processes and improve data
quality.
WHAT ARE CLINICAL TRAILS ?
• Clinical trails are research studies that
evaluate the safety and effectiveness of
new medical treatment or interventions.
They play a crucial role in advancing
healthcare and improving patient care.
• However, traditional clinical trails can be
time-consuming, costly, and prone to
biases.
10/06/2024
www.clinosol.com | follow us on social media
@clinosolresearch
4
DATA STANDARDIZATION IN
CLINICAL RESEARCH.
• Definition: Uniform formats and
definitions for collecting, storing, and
analyzing data.
• Importance: Enables cross-study
comparisons and meta-analyses.
• Benefits:
1. Facilitates data sharing between
researchers and institutions
2. Improves efficiency in data analysis
and reporting
3. Enhances data quality and reduces
errors
4. Supports regulatory compliance and
faster submissions
10/06/2024
www.clinosol.com | follow us on social media
@clinosolresearch
5
TRADITIONAL CHALLENGES IN STUDY SETUP.
• Time-consuming manual processes for
protocol development
• Inconsistent data collection methods
across sites
• Difficulty in harmonizing data from
multiple sources
• Quality control issues leading to data
cleaning delays
• Lengthy recruitment processes and
suboptimal site selection
10/06/2024
www.clinosol.com | follow us on social media
@clinosolresearch
6
ENTER AI AND MACHINE LEARNING.
• AI: Systems that can perform tasks
requiring human-like intelligence.
• ML: Algorithms that improve through
experience with data.
• Applications in clinical research:
1. Natural Language Processing for
document analysis
2. Predictive modeling for study design and
patient outcomes
3. Computer vision for medical imaging
analysis
4. Deep learning for complex pattern
recognition in large datasets
10/06/2024
www.clinosol.com | follow us on social media
@clinosolresearch
7
AI-POWERED DATA STANDARDIZATION.
• Automated creation of standardized
Case Report Forms (CRFs)
• AI-driven mapping of local terminologies
to standard ontologies (e.g., SNOMED
CT, LOINC)
• Real-time data quality checks using ML
algorithms
• Intelligent data extraction from
unstructured sources (e.g., clinical
notes)
• Automated data reconciliation and
discrepancy management
10/06/2024
www.clinosol.com | follow us on social media
@clinosolresearch
8
ACCELERATING STUDY SETUP WITH ML.
• Predictive modeling for optimal study
design and sample size calculation.
• Automated protocol development based
on historical study data.
• Intelligent site selection using ML-driven
analysis of past performance.
• Enhanced patient recruitment through
predictive analytics.
• Automated regulatory document
generation and management.
10/06/2024
www.clinosol.com | follow us on social media
@clinosolresearch
9
CASE STUDY.
• Example: Pharmaceutical company
implementing AI/ML for multi-center trial.
• Results:
1. 40% reduction in study setup time.
2. 30% improvement in data quality (fewer
queries).
3. 25% increase in patient recruitment rate.
4. 50% reduction in time spent on data cleaning
and standardization.
10/06/2024
www.clinosol.com | follow us on social media
@clinosolresearch
10
FUTURE PROSOECTS.
• Integration of real-world data sources
for more comprehensive analyses.
• Federated learning for collaborative
research while preserving data privacy.
• AI-powered adaptive trial designs.
• Automated generation of study reports
and publications.
• Blockchain for immutable and
transparent data management.
10/06/2024
www.clinosol.com | follow us on social media
@clinosolresearch
11
CHALLENGES AND CONSIDERATIONS.
• Ensuring data privacy and security in AI-
driven systems.
• Maintaining regulatory compliance (e.g.,
GDPR, HIPAA).
• Need for human oversight and
interpretability of AI decisions.
• Addressing potential biases in AI/ML
models.
• Managing the transition and training for
research teams.
10/06/2024
www.clinosol.com | follow us on social media
@clinosolresearch
12
CONCLUSION.
• Recap: AI and ML offer powerful
tools for standardizing data and
accelerating study setup.
• Benefits include improved
efficiency, data quality, and cross-
study comparability.
• Call to action: Embrace AI/ML
technologies to stay competitive in
clinical research.
• Future of clinical trials: Faster, more
efficient, and more data-driven than
ever before
10/06/2024
www.clinosol.com | follow us on social media
@clinosolresearch
13
Thank You!
www.clinosol.com
(India | Canada)
9121151622/623/624
info@clinosol.com
10/06/2024
www.clinosol.com | follow us on social media
@clinosolresearch
14

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Data Standardization and Accelerated Study Setup: The Power of AI and ML

  • 1. Welcome DATA STANDARDIZATION AND ACCELERATED STUDY SETUP : THE POWER OF AI AND ML. SYED ABDUL KHADEER ALI B-PHARMACY STUDENT ID:- CLS_048/052024 10/06/2024 www.clinosol.com | follow us on social media @clinosolresearch 1
  • 2. Index • INTRODUCTION • WHAT ARE CLINICAL TRAILS • DATA STANDARDIZATION IN CLINICAL RESEARCH • TRADITIONAL CHALLENGES IN STUDY SETUP • ENTER AI AND MACHINE LEARNING • AI-POWERED DATA STANDARDIZATION • ACCELERATING STUDY SETUP WITH ML • CASE STUDY • FUTURE PROSPECTS • CHALLENGES AND CONSIDERATIONS • CONCLUSION 10/06/2024 www.clinosol.com | follow us on social media @clinosolresearch 2
  • 3. INTRODUCTION 10/06/2024 www.clinosol.com | follow us on social media @clinosolresearch 3 Welcome to the presentation on DATA STANDARDIZATION AND ACCELERATED STUDY SETUP : THE POWER OF AI & ML. - Clinical research faces challenges in data management and study efficiency. - Data inconsistencies and lengthy setup times hinder progress. - Data standardization is crucial for comparing and aggregating study results. - AI and ML offer promising solutions to streamline processes and improve data quality.
  • 4. WHAT ARE CLINICAL TRAILS ? • Clinical trails are research studies that evaluate the safety and effectiveness of new medical treatment or interventions. They play a crucial role in advancing healthcare and improving patient care. • However, traditional clinical trails can be time-consuming, costly, and prone to biases. 10/06/2024 www.clinosol.com | follow us on social media @clinosolresearch 4
  • 5. DATA STANDARDIZATION IN CLINICAL RESEARCH. • Definition: Uniform formats and definitions for collecting, storing, and analyzing data. • Importance: Enables cross-study comparisons and meta-analyses. • Benefits: 1. Facilitates data sharing between researchers and institutions 2. Improves efficiency in data analysis and reporting 3. Enhances data quality and reduces errors 4. Supports regulatory compliance and faster submissions 10/06/2024 www.clinosol.com | follow us on social media @clinosolresearch 5
  • 6. TRADITIONAL CHALLENGES IN STUDY SETUP. • Time-consuming manual processes for protocol development • Inconsistent data collection methods across sites • Difficulty in harmonizing data from multiple sources • Quality control issues leading to data cleaning delays • Lengthy recruitment processes and suboptimal site selection 10/06/2024 www.clinosol.com | follow us on social media @clinosolresearch 6
  • 7. ENTER AI AND MACHINE LEARNING. • AI: Systems that can perform tasks requiring human-like intelligence. • ML: Algorithms that improve through experience with data. • Applications in clinical research: 1. Natural Language Processing for document analysis 2. Predictive modeling for study design and patient outcomes 3. Computer vision for medical imaging analysis 4. Deep learning for complex pattern recognition in large datasets 10/06/2024 www.clinosol.com | follow us on social media @clinosolresearch 7
  • 8. AI-POWERED DATA STANDARDIZATION. • Automated creation of standardized Case Report Forms (CRFs) • AI-driven mapping of local terminologies to standard ontologies (e.g., SNOMED CT, LOINC) • Real-time data quality checks using ML algorithms • Intelligent data extraction from unstructured sources (e.g., clinical notes) • Automated data reconciliation and discrepancy management 10/06/2024 www.clinosol.com | follow us on social media @clinosolresearch 8
  • 9. ACCELERATING STUDY SETUP WITH ML. • Predictive modeling for optimal study design and sample size calculation. • Automated protocol development based on historical study data. • Intelligent site selection using ML-driven analysis of past performance. • Enhanced patient recruitment through predictive analytics. • Automated regulatory document generation and management. 10/06/2024 www.clinosol.com | follow us on social media @clinosolresearch 9
  • 10. CASE STUDY. • Example: Pharmaceutical company implementing AI/ML for multi-center trial. • Results: 1. 40% reduction in study setup time. 2. 30% improvement in data quality (fewer queries). 3. 25% increase in patient recruitment rate. 4. 50% reduction in time spent on data cleaning and standardization. 10/06/2024 www.clinosol.com | follow us on social media @clinosolresearch 10
  • 11. FUTURE PROSOECTS. • Integration of real-world data sources for more comprehensive analyses. • Federated learning for collaborative research while preserving data privacy. • AI-powered adaptive trial designs. • Automated generation of study reports and publications. • Blockchain for immutable and transparent data management. 10/06/2024 www.clinosol.com | follow us on social media @clinosolresearch 11
  • 12. CHALLENGES AND CONSIDERATIONS. • Ensuring data privacy and security in AI- driven systems. • Maintaining regulatory compliance (e.g., GDPR, HIPAA). • Need for human oversight and interpretability of AI decisions. • Addressing potential biases in AI/ML models. • Managing the transition and training for research teams. 10/06/2024 www.clinosol.com | follow us on social media @clinosolresearch 12
  • 13. CONCLUSION. • Recap: AI and ML offer powerful tools for standardizing data and accelerating study setup. • Benefits include improved efficiency, data quality, and cross- study comparability. • Call to action: Embrace AI/ML technologies to stay competitive in clinical research. • Future of clinical trials: Faster, more efficient, and more data-driven than ever before 10/06/2024 www.clinosol.com | follow us on social media @clinosolresearch 13
  • 14. Thank You! www.clinosol.com (India | Canada) 9121151622/623/624 info@clinosol.com 10/06/2024 www.clinosol.com | follow us on social media @clinosolresearch 14