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In-Memory Applications For Informed Patients
Dr. Matthieu-P. Schapranow
Dokuz Eylul University, Izmir, Türkiye
August 12, 2014
■  Founded as a public-private partnership
in 1998 in Potsdam near Berlin, Germany
■  Institute belongs to the
University of Potsdam
■  Ranked 1st in CHE since 2009
■  500 B.Sc. and M.Sc. students
■  10 professors, 150 PhD students
■  Course of study: IT Systems Engineering
Hasso Plattner Institute
Key Facts
In-Memory
Applications For
Informed Patients
2
Dr. Schapranow, HPI,
Aug 12, 2014
■ Full university curriculum
■ Bachelor (6 semesters)
■ Master (4 semesters)
■ Orthogonal Activities:
□ E-Health Consortium
□ School of Design Thinking
□ Research School
Hasso Plattner Institute
Programs
In-Memory
Applications For
Informed Patients
3
Dr. Schapranow, HPI,
Aug 12, 2014
Prof. Dr. h.c. Hasso Plattner
■ Research focuses on the technical aspects of enterprise
software and design of complex applications
□  In-Memory Data Management for Enterprise
Applications
□  Enterprise Application Programming Model
□  Scientific Data Management
□  Human-Centered Software Design and Engineering
■ Industry cooperations, e.g. SAP, Siemens, Audi, and EADS
■ Research cooperations, e.g. Stanford, MIT, and Berkeley
Hasso Plattner Institute
Enterprise Platform and Integration Concepts Group
Dr. Schapranow, HPI,
Aug 12, 2014
In-Memory
Applications For
Informed Patients
4
Partner of Stanford
Center for Design
Research
Partner of MIT in
Supply Chain
Innovation and
CSAIL
Partner at
UC Berkeley
RAD / AMP Lab
Partner of SAP
AG
■  Patients
□  Individual anamnesis, family history, and background
□  Require fast access to individualized therapy
■  Clinicians
□  Identify root and extent of disease using laboratory tests
□  Evaluate therapy alternatives, adapt existing therapy
■  Researchers
□  Conduct laboratory work, e.g. analyze patient samples
□  Create new research findings and come-up with treatment alternatives
The Setting
Actors in Oncology
Dr. Schapranow, HPI,
Aug 12, 2014
5
In-Memory
Applications For
Informed Patients
■  Motivation: Can we enable patients to:
□  Understand and monitor their diseases to document the impact on their lives,
□  Receive latest information about their (chronic) diseases,
□  Cooperatively exchange with physicians and patients to improve quality of living
Our Motivation
Make Precision Medicine Come Routine in Real Life
In-Memory
Applications For
Informed Patients
6
Dr. Schapranow, HPI,
Aug 12, 2014
Real-time Processing of Event Data from Medical Sensors
■  Processing of sensor data, e.g. from Intensive Care
Units (ICUs) or wearable sensor devices (quantify self)
■  Multi-modal real-time analysis to detect indicators for
severe events, such as heart attacks or strokes
■  Incorporates machine-learning algorithms to detect
severe events and to
inform clinical
personnel in time
■  Successfully tested
with 100 Hz event
rate, i.e. sufficient
for ICU use
In-Memory
Applications For
Informed Patients
Comparison of waveform data
with history of similar patients
7
Dr. Schapranow, HPI,
Aug 12, 2014
t
Drug Safety
Statistical Analysis of Drug Side Effects Data
■  Combines confirmed side effect data from different
data sources
■  Interactive statistical analysis, e.g. apriori rules, to
discover still unknown interactions
■  Integrates personal prescription data and directly
report side effects
■  Work together with your doctor to prevent interaction
with already prescribed drugs
In-Memory
Applications For
Informed Patients
8
Dr. Schapranow, HPI,
Aug 12, 2014
Unified access to
international side effect data
On-the-fly extension of
database schema to add side
effect databases
+++
Medical Knowledge Cockpit for Patients
■  Search for affected genes in distributed and
heterogeneous data sources
■  Immediate exploration of relevant information, such as
□  Gene descriptions,
□  Molecular impact and related pathways,
□  Scientific publications, and
□  Suitable clinical trials.
■  No manual searching for hours or days:
In-memory technology translates searching into
interactive finding!
In-Memory
Applications For
Informed Patients
Automatic clinical trial
matching build on text
analysis features
Unified access to structured
and un-structured data
sources
9
Dr. Schapranow, HPI,
Aug 12, 2014
■  In-place preview of relevant data, such as publications and publication meta data
■  Incorporating individual filter settings, e.g. additional search terms
Medical Knowledge Cockpit for Patients
Publications
In-Memory
Applications For
Informed Patients
10
Dr. Schapranow, HPI,
Aug 12, 2014
Dr. Schapranow, HPI,
Aug 12, 2014■  Personalized clinical trials, e.g. by incorporating patient specifics
■  Classification of internal/external trials based on treating institute
Medical Knowledge Cockpit for Patients
Latest Clinical Trials
In-Memory
Applications For
Informed Patients
11
■  Google-like user interface for searching data
■  Seamless integration of individual EMR data
■  Search various sources for biomarkers, literature, and diseases
Medical Knowledge Cockpit for Patients and Clinicians
Seamless Integration of Patient Specifics
In-Memory
Applications For
Informed Patients
12
Dr. Schapranow, HPI,
Aug 12, 2014
Dr. Schapranow, HPI,
Aug 12, 2014
■  Interactively explore relevant publications, e.g. PDFs
■  Improved ease of exploration, e.g. by highlighted medical terms and relevant
concepts
Medical Knowledge Cockpit for Clinicians
Publications
In-Memory
Applications For
Informed Patients
13
Dr. Schapranow, HPI,
Aug 12, 2014
Medical Knowledge Cockpit for Clinicians
Pathway Topology Analysis
■  Search in pathways is limited to “is a certain
element contained” today
■  Integrated >1,5k pathways from international
sources, e.g. KEGG, HumanCyc, and WikiPathways,
into HANA
■  Implemented graph-based topology exploration and
ranking based on patient specifics
■  Enables interactive identification of possible
dysfunctions affecting the course of a therapy
before its start
In-Memory
Applications For
Informed Patients
Unified access to multiple formerly
disjoint data sources
Pathway analysis of genetic
variants with graph engine
14
Medical Knowledge Cockpit for Clinicians
Search in Structured and Unstructured Medical Data
■  Extended text analysis feature by medical
terminology
□  Genes (122,975 + 186,771 synonyms)
□  Medical terms and categories (98,886 diseases, 47
categories)
□  Pharmaceutical ingredients (7,099)
■  Indexed clinicaltrials.gov database (145k trials/
30,138 recruiting)
■  Extracted, e.g., 320k genes, 161k ingredients, 30k
periods
■  Select studies based on multiple filters in less than
500ms
In-Memory
Applications For
Informed Patients
Clinical trial matching using text
analysis features
Unified access to structured and
unstructured data sources
T
15
Dr. Schapranow, HPI,
Aug 12, 2014
■  For patients
□  Access latest international knowledge about specific diseases
□  Identify clinical trials and medical experts worldwide
□  Participate in most appropriate therapy from the beginning on
□  Collect and combine laboratory data to build personal health record
□  Share access to PHR data for valuable Analyze Genomes services
What to take home?
Test-drive it yourself: http://we.AnalyzeGenomes.com
Dr. Schapranow, HPI,
Aug 12, 2014
16
In-Memory
Applications For
Informed Patients
Keep in contact with us!
Hasso Plattner Institute
Enterprise Platform & Integration Concepts (EPIC)
Program Manager E-Health
Dr. Matthieu-P. Schapranow
August-Bebel-Str. 88
14482 Potsdam, Germany
Dr. Matthieu-P. Schapranow
schapranow@hpi.de
http://we.analyzegenomes.com/
Dr. Schapranow, HPI,
Aug 12, 2014
In-Memory
Applications For
Informed Patients
17

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In-memory Applications for Informed Patients

  • 1. In-Memory Applications For Informed Patients Dr. Matthieu-P. Schapranow Dokuz Eylul University, Izmir, Türkiye August 12, 2014
  • 2. ■  Founded as a public-private partnership in 1998 in Potsdam near Berlin, Germany ■  Institute belongs to the University of Potsdam ■  Ranked 1st in CHE since 2009 ■  500 B.Sc. and M.Sc. students ■  10 professors, 150 PhD students ■  Course of study: IT Systems Engineering Hasso Plattner Institute Key Facts In-Memory Applications For Informed Patients 2 Dr. Schapranow, HPI, Aug 12, 2014
  • 3. ■ Full university curriculum ■ Bachelor (6 semesters) ■ Master (4 semesters) ■ Orthogonal Activities: □ E-Health Consortium □ School of Design Thinking □ Research School Hasso Plattner Institute Programs In-Memory Applications For Informed Patients 3 Dr. Schapranow, HPI, Aug 12, 2014
  • 4. Prof. Dr. h.c. Hasso Plattner ■ Research focuses on the technical aspects of enterprise software and design of complex applications □  In-Memory Data Management for Enterprise Applications □  Enterprise Application Programming Model □  Scientific Data Management □  Human-Centered Software Design and Engineering ■ Industry cooperations, e.g. SAP, Siemens, Audi, and EADS ■ Research cooperations, e.g. Stanford, MIT, and Berkeley Hasso Plattner Institute Enterprise Platform and Integration Concepts Group Dr. Schapranow, HPI, Aug 12, 2014 In-Memory Applications For Informed Patients 4 Partner of Stanford Center for Design Research Partner of MIT in Supply Chain Innovation and CSAIL Partner at UC Berkeley RAD / AMP Lab Partner of SAP AG
  • 5. ■  Patients □  Individual anamnesis, family history, and background □  Require fast access to individualized therapy ■  Clinicians □  Identify root and extent of disease using laboratory tests □  Evaluate therapy alternatives, adapt existing therapy ■  Researchers □  Conduct laboratory work, e.g. analyze patient samples □  Create new research findings and come-up with treatment alternatives The Setting Actors in Oncology Dr. Schapranow, HPI, Aug 12, 2014 5 In-Memory Applications For Informed Patients
  • 6. ■  Motivation: Can we enable patients to: □  Understand and monitor their diseases to document the impact on their lives, □  Receive latest information about their (chronic) diseases, □  Cooperatively exchange with physicians and patients to improve quality of living Our Motivation Make Precision Medicine Come Routine in Real Life In-Memory Applications For Informed Patients 6 Dr. Schapranow, HPI, Aug 12, 2014
  • 7. Real-time Processing of Event Data from Medical Sensors ■  Processing of sensor data, e.g. from Intensive Care Units (ICUs) or wearable sensor devices (quantify self) ■  Multi-modal real-time analysis to detect indicators for severe events, such as heart attacks or strokes ■  Incorporates machine-learning algorithms to detect severe events and to inform clinical personnel in time ■  Successfully tested with 100 Hz event rate, i.e. sufficient for ICU use In-Memory Applications For Informed Patients Comparison of waveform data with history of similar patients 7 Dr. Schapranow, HPI, Aug 12, 2014 t
  • 8. Drug Safety Statistical Analysis of Drug Side Effects Data ■  Combines confirmed side effect data from different data sources ■  Interactive statistical analysis, e.g. apriori rules, to discover still unknown interactions ■  Integrates personal prescription data and directly report side effects ■  Work together with your doctor to prevent interaction with already prescribed drugs In-Memory Applications For Informed Patients 8 Dr. Schapranow, HPI, Aug 12, 2014 Unified access to international side effect data On-the-fly extension of database schema to add side effect databases +++
  • 9. Medical Knowledge Cockpit for Patients ■  Search for affected genes in distributed and heterogeneous data sources ■  Immediate exploration of relevant information, such as □  Gene descriptions, □  Molecular impact and related pathways, □  Scientific publications, and □  Suitable clinical trials. ■  No manual searching for hours or days: In-memory technology translates searching into interactive finding! In-Memory Applications For Informed Patients Automatic clinical trial matching build on text analysis features Unified access to structured and un-structured data sources 9 Dr. Schapranow, HPI, Aug 12, 2014
  • 10. ■  In-place preview of relevant data, such as publications and publication meta data ■  Incorporating individual filter settings, e.g. additional search terms Medical Knowledge Cockpit for Patients Publications In-Memory Applications For Informed Patients 10 Dr. Schapranow, HPI, Aug 12, 2014
  • 11. Dr. Schapranow, HPI, Aug 12, 2014■  Personalized clinical trials, e.g. by incorporating patient specifics ■  Classification of internal/external trials based on treating institute Medical Knowledge Cockpit for Patients Latest Clinical Trials In-Memory Applications For Informed Patients 11
  • 12. ■  Google-like user interface for searching data ■  Seamless integration of individual EMR data ■  Search various sources for biomarkers, literature, and diseases Medical Knowledge Cockpit for Patients and Clinicians Seamless Integration of Patient Specifics In-Memory Applications For Informed Patients 12 Dr. Schapranow, HPI, Aug 12, 2014
  • 13. Dr. Schapranow, HPI, Aug 12, 2014 ■  Interactively explore relevant publications, e.g. PDFs ■  Improved ease of exploration, e.g. by highlighted medical terms and relevant concepts Medical Knowledge Cockpit for Clinicians Publications In-Memory Applications For Informed Patients 13
  • 14. Dr. Schapranow, HPI, Aug 12, 2014 Medical Knowledge Cockpit for Clinicians Pathway Topology Analysis ■  Search in pathways is limited to “is a certain element contained” today ■  Integrated >1,5k pathways from international sources, e.g. KEGG, HumanCyc, and WikiPathways, into HANA ■  Implemented graph-based topology exploration and ranking based on patient specifics ■  Enables interactive identification of possible dysfunctions affecting the course of a therapy before its start In-Memory Applications For Informed Patients Unified access to multiple formerly disjoint data sources Pathway analysis of genetic variants with graph engine 14
  • 15. Medical Knowledge Cockpit for Clinicians Search in Structured and Unstructured Medical Data ■  Extended text analysis feature by medical terminology □  Genes (122,975 + 186,771 synonyms) □  Medical terms and categories (98,886 diseases, 47 categories) □  Pharmaceutical ingredients (7,099) ■  Indexed clinicaltrials.gov database (145k trials/ 30,138 recruiting) ■  Extracted, e.g., 320k genes, 161k ingredients, 30k periods ■  Select studies based on multiple filters in less than 500ms In-Memory Applications For Informed Patients Clinical trial matching using text analysis features Unified access to structured and unstructured data sources T 15 Dr. Schapranow, HPI, Aug 12, 2014
  • 16. ■  For patients □  Access latest international knowledge about specific diseases □  Identify clinical trials and medical experts worldwide □  Participate in most appropriate therapy from the beginning on □  Collect and combine laboratory data to build personal health record □  Share access to PHR data for valuable Analyze Genomes services What to take home? Test-drive it yourself: http://we.AnalyzeGenomes.com Dr. Schapranow, HPI, Aug 12, 2014 16 In-Memory Applications For Informed Patients
  • 17. Keep in contact with us! Hasso Plattner Institute Enterprise Platform & Integration Concepts (EPIC) Program Manager E-Health Dr. Matthieu-P. Schapranow August-Bebel-Str. 88 14482 Potsdam, Germany Dr. Matthieu-P. Schapranow schapranow@hpi.de http://we.analyzegenomes.com/ Dr. Schapranow, HPI, Aug 12, 2014 In-Memory Applications For Informed Patients 17