SlideShare a Scribd company logo
1 of 91
Medical Data Mining
Lars Juhl Jensen
structured data
Jensen et al., Nature Reviews Genetics, 2012
unstructured data
central registries
individual hospitals
centralized approval
opt-in
Danish registries
civil registration system
CPR number
established in 1968
Jensen et al., Nature Reviews Genetics, 2012
national discharge registry
14 years
6.2 million patients
45 million admissions
68 million records
119 million diagnosis
ICD-10
Jensen et al., Nature Reviews Genetics, 2012
reimbursement
not research
diagnosis trajectories
naïve approach
comorbidity
Jensen et al., Nature Reviews Genetics, 2012
confounding factors
“known knowns”
gender
age
type of hospital encounter
Jensen et al., submitted, 2014
“known unknowns”
smoking
diet
“unknown unknowns”
reporting biases
matched controls
temporal correlation
Jensen et al., Nature Communications, 2014
trajectories
Jensen et al., Nature Communications, 2014
trajectory networks
Jensen et al., Nature Communications, 2014
key diagnoses
Jensen et al., Nature Communications, 2014
direct medical implications
electronic health records
structured data
Jensen et al., Nature Reviews Genetics, 2012
unstructured data
free text
Danish
busy doctors
typos
psychiatric patients
delusions
heavily medicated
Eriksson et al., Drug Safety, 2014
text mining
dictionary-based method
diseases
drugs
adverse drug reactions
expansion rules
typos
“negative modifiers”
negations
delusions
detailed disease profiles
Roque et al., PLOS Computational Biology, 2011
3262638254947
Assigned codes
Text mined codes
pharmacovigilance
structured data
medication
semi-structured data
drug indications
known ADRs
unstructured data
adverse drug reactions
statistical correlations
hand-crafted rules
Eriksson et al., Drug Safety, 2014
known ADRs
ADR frequencies
Eriksson et al., Drug Safety, 2014
detect new ADRs
Acknowledgments
Disease trajectories
Anders Bøck Jensen
Tudor Oprea
Pope Moseley
Søren Brunak
Adverse drug reactions
Robert Eriksson
Thomas Werge
Søren Brunak
EHR text mining
Peter Bjødstrup
Jensen
Robert Eriksson
Henriette Schmock
Francisco S. Roque
Anders Juul
Marlene Dalgaard
Massimo Andreatta
Sune Frankild
Eva Roitmann
Thomas Hansen
Karen Søeby
Søren Bredkjær
Thomas Werge
Søren Brunak

More Related Content

What's hot

Health literacy
Health literacyHealth literacy
Health literacy
jescarra
 

What's hot (16)

Medical data and text mining: Linking diseases, drugs, and adverse reactions
Medical data and text mining: Linking diseases, drugs, and adverse reactionsMedical data and text mining: Linking diseases, drugs, and adverse reactions
Medical data and text mining: Linking diseases, drugs, and adverse reactions
 
Medical data and text mining: Linking diseases, drugs, and adverse reactions
Medical data and text mining: Linking diseases, drugs, and adverse reactionsMedical data and text mining: Linking diseases, drugs, and adverse reactions
Medical data and text mining: Linking diseases, drugs, and adverse reactions
 
Medical data and text mining - Linking diseases, drugs, and adverse reactions
Medical data and text mining - Linking diseases, drugs, and adverse reactionsMedical data and text mining - Linking diseases, drugs, and adverse reactions
Medical data and text mining - Linking diseases, drugs, and adverse reactions
 
Daily Health Update 11-24-17 Rode Chiropractic San Diego CA
Daily Health Update  11-24-17 Rode Chiropractic  San Diego CADaily Health Update  11-24-17 Rode Chiropractic  San Diego CA
Daily Health Update 11-24-17 Rode Chiropractic San Diego CA
 
Medical data and text mining - Linking diseases, drugs, and adverse reactions
Medical data and text mining - Linking diseases, drugs, and adverse reactionsMedical data and text mining - Linking diseases, drugs, and adverse reactions
Medical data and text mining - Linking diseases, drugs, and adverse reactions
 
Medical data and text mining: Linking diseases, drugs, and adverse reactions
Medical data and text mining: Linking diseases, drugs, and adverse reactionsMedical data and text mining: Linking diseases, drugs, and adverse reactions
Medical data and text mining: Linking diseases, drugs, and adverse reactions
 
Medical data and text mining: Linking diseases, drugs, and adverse reactions
Medical data and text mining: Linking diseases, drugs, and adverse reactionsMedical data and text mining: Linking diseases, drugs, and adverse reactions
Medical data and text mining: Linking diseases, drugs, and adverse reactions
 
Waiting Too Long for Hospice Care Worsens End-of-Life Suffering
Waiting Too Long for Hospice Care Worsens End-of-Life SufferingWaiting Too Long for Hospice Care Worsens End-of-Life Suffering
Waiting Too Long for Hospice Care Worsens End-of-Life Suffering
 
Medical informatics - Linking diseases, drugs, and adverse reactions
Medical informatics - Linking diseases, drugs, and adverse reactionsMedical informatics - Linking diseases, drugs, and adverse reactions
Medical informatics - Linking diseases, drugs, and adverse reactions
 
Dyspnea
DyspneaDyspnea
Dyspnea
 
factors-associated-with-medication-adherence-among-hypertensive-patients-in-a...
factors-associated-with-medication-adherence-among-hypertensive-patients-in-a...factors-associated-with-medication-adherence-among-hypertensive-patients-in-a...
factors-associated-with-medication-adherence-among-hypertensive-patients-in-a...
 
autoimmune-disease-budget-buster-or-enlightened-solutions
autoimmune-disease-budget-buster-or-enlightened-solutionsautoimmune-disease-budget-buster-or-enlightened-solutions
autoimmune-disease-budget-buster-or-enlightened-solutions
 
Health literacy
Health literacyHealth literacy
Health literacy
 
Training in thinking
Training in thinkingTraining in thinking
Training in thinking
 
Hospitalizations After Severe Blood Infections May Be Preventable
Hospitalizations After Severe Blood Infections May Be PreventableHospitalizations After Severe Blood Infections May Be Preventable
Hospitalizations After Severe Blood Infections May Be Preventable
 
Pediatric Hospital Medicine Top 10 (ish) 2014
Pediatric Hospital Medicine Top 10 (ish)  2014Pediatric Hospital Medicine Top 10 (ish)  2014
Pediatric Hospital Medicine Top 10 (ish) 2014
 

Viewers also liked

final_year_project
final_year_projectfinal_year_project
final_year_project
MALLIKA H.M
 
A Study of RandomForests Learning Mechanism with Application to the Identific...
A Study of RandomForests Learning Mechanism with Application to the Identific...A Study of RandomForests Learning Mechanism with Application to the Identific...
A Study of RandomForests Learning Mechanism with Application to the Identific...
Salford Systems
 
Student Work - Diabetes
Student Work - DiabetesStudent Work - Diabetes
Student Work - Diabetes
jeremyschriner
 
Hybrid Technique for Associative Classification of Heart Diseases
Hybrid Technique for Associative Classification of Heart DiseasesHybrid Technique for Associative Classification of Heart Diseases
Hybrid Technique for Associative Classification of Heart Diseases
Jagdeep Singh Malhi
 
A Novel Approach for Breast Cancer Detection using Data Mining Techniques
A Novel Approach for Breast Cancer Detection using Data Mining TechniquesA Novel Approach for Breast Cancer Detection using Data Mining Techniques
A Novel Approach for Breast Cancer Detection using Data Mining Techniques
ahmad abdelhafeez
 
Predicting Hospital Readmission Using TreeNet
Predicting Hospital Readmission Using TreeNetPredicting Hospital Readmission Using TreeNet
Predicting Hospital Readmission Using TreeNet
Salford Systems
 
1.PPT (1.PREDICTION OF DISEASES New)
1.PPT (1.PREDICTION OF DISEASES New)1.PPT (1.PREDICTION OF DISEASES New)
1.PPT (1.PREDICTION OF DISEASES New)
Jashvant Shah
 

Viewers also liked (20)

Mining the biomedical literature: Dictionary-based identification of proteins...
Mining the biomedical literature: Dictionary-based identification of proteins...Mining the biomedical literature: Dictionary-based identification of proteins...
Mining the biomedical literature: Dictionary-based identification of proteins...
 
Breast cancer diagnosis and recurrence prediction using machine learning tech...
Breast cancer diagnosis and recurrence prediction using machine learning tech...Breast cancer diagnosis and recurrence prediction using machine learning tech...
Breast cancer diagnosis and recurrence prediction using machine learning tech...
 
final_year_project
final_year_projectfinal_year_project
final_year_project
 
Applying Machine Learning Techniques to Breast Cancer Research - by Benjamin ...
Applying Machine Learning Techniques to Breast Cancer Research - by Benjamin ...Applying Machine Learning Techniques to Breast Cancer Research - by Benjamin ...
Applying Machine Learning Techniques to Breast Cancer Research - by Benjamin ...
 
Diagnosing Cancer with Machine Learning
Diagnosing Cancer with Machine LearningDiagnosing Cancer with Machine Learning
Diagnosing Cancer with Machine Learning
 
Text mining in action: early detection of disease outbreaks from online media
Text mining in action: early detection of disease outbreaks from online mediaText mining in action: early detection of disease outbreaks from online media
Text mining in action: early detection of disease outbreaks from online media
 
A Study of RandomForests Learning Mechanism with Application to the Identific...
A Study of RandomForests Learning Mechanism with Application to the Identific...A Study of RandomForests Learning Mechanism with Application to the Identific...
A Study of RandomForests Learning Mechanism with Application to the Identific...
 
Student Work - Diabetes
Student Work - DiabetesStudent Work - Diabetes
Student Work - Diabetes
 
4part1
4part14part1
4part1
 
Hybrid Technique for Associative Classification of Heart Diseases
Hybrid Technique for Associative Classification of Heart DiseasesHybrid Technique for Associative Classification of Heart Diseases
Hybrid Technique for Associative Classification of Heart Diseases
 
A Novel Approach for Breast Cancer Detection using Data Mining Techniques
A Novel Approach for Breast Cancer Detection using Data Mining TechniquesA Novel Approach for Breast Cancer Detection using Data Mining Techniques
A Novel Approach for Breast Cancer Detection using Data Mining Techniques
 
Support vector machine parameters tuning using grey wolf optimization
Support vector machine parameters tuning using grey wolf optimizationSupport vector machine parameters tuning using grey wolf optimization
Support vector machine parameters tuning using grey wolf optimization
 
Machine Learning - Breast Cancer Diagnosis
Machine Learning - Breast Cancer DiagnosisMachine Learning - Breast Cancer Diagnosis
Machine Learning - Breast Cancer Diagnosis
 
Data Mining Techniques In Computer Aided Cancer Diagnosis
Data Mining Techniques In Computer Aided Cancer DiagnosisData Mining Techniques In Computer Aided Cancer Diagnosis
Data Mining Techniques In Computer Aided Cancer Diagnosis
 
Predicting Hospital Readmission Using TreeNet
Predicting Hospital Readmission Using TreeNetPredicting Hospital Readmission Using TreeNet
Predicting Hospital Readmission Using TreeNet
 
a novel approach for breast cancer detection using data mining tool weka
a novel approach for breast cancer detection using data mining tool wekaa novel approach for breast cancer detection using data mining tool weka
a novel approach for breast cancer detection using data mining tool weka
 
1.PPT (1.PREDICTION OF DISEASES New)
1.PPT (1.PREDICTION OF DISEASES New)1.PPT (1.PREDICTION OF DISEASES New)
1.PPT (1.PREDICTION OF DISEASES New)
 
Data mining ppt
Data mining pptData mining ppt
Data mining ppt
 
Breast Cancer Diagnosis using a Hybrid Genetic Algorithm for Feature Selectio...
Breast Cancer Diagnosis using a Hybrid Genetic Algorithm for Feature Selectio...Breast Cancer Diagnosis using a Hybrid Genetic Algorithm for Feature Selectio...
Breast Cancer Diagnosis using a Hybrid Genetic Algorithm for Feature Selectio...
 
Data mining for diabetes readmission
Data mining for diabetes readmissionData mining for diabetes readmission
Data mining for diabetes readmission
 

Similar to Medical Data Mining

Medical bioinformatics: Current trends, industry needs, and core competencies
Medical bioinformatics: Current trends, industry needs, and core competenciesMedical bioinformatics: Current trends, industry needs, and core competencies
Medical bioinformatics: Current trends, industry needs, and core competencies
Lars Juhl Jensen
 
Networks of proteins and diseases
Networks of proteins and diseasesNetworks of proteins and diseases
Networks of proteins and diseases
Lars Juhl Jensen
 

Similar to Medical Data Mining (20)

Medical data mining
Medical data miningMedical data mining
Medical data mining
 
Medical Data Mining
Medical Data MiningMedical Data Mining
Medical Data Mining
 
Medical data mining
Medical data miningMedical data mining
Medical data mining
 
Medical network analysis: Linking diseases and genes through data and text mi...
Medical network analysis: Linking diseases and genes through data and text mi...Medical network analysis: Linking diseases and genes through data and text mi...
Medical network analysis: Linking diseases and genes through data and text mi...
 
Medical data and text mining: Linking diseases, drugs, and adverse reactions
Medical data and text mining: Linking diseases, drugs, and adverse reactionsMedical data and text mining: Linking diseases, drugs, and adverse reactions
Medical data and text mining: Linking diseases, drugs, and adverse reactions
 
Medical data and text mining: Linking diseases, drugs, and adverse reactions
Medical data and text mining: Linking diseases, drugs, and adverse reactionsMedical data and text mining: Linking diseases, drugs, and adverse reactions
Medical data and text mining: Linking diseases, drugs, and adverse reactions
 
Medical data and text mining: Linking diseases, drugs, and adverse reactions
Medical data and text mining: Linking diseases, drugs, and adverse reactionsMedical data and text mining: Linking diseases, drugs, and adverse reactions
Medical data and text mining: Linking diseases, drugs, and adverse reactions
 
Medical data and text mining - Linking diseases, drugs, and adverse reactions
Medical data and text mining - Linking diseases, drugs, and adverse reactionsMedical data and text mining - Linking diseases, drugs, and adverse reactions
Medical data and text mining - Linking diseases, drugs, and adverse reactions
 
Large-scale integration of data and text
Large-scale integration of data and textLarge-scale integration of data and text
Large-scale integration of data and text
 
Large-scale biomedical data and text integration
Large-scale biomedical data and text integrationLarge-scale biomedical data and text integration
Large-scale biomedical data and text integration
 
Medical text mining: Linking diseases, drugs, and adverse reactions
Medical text mining: Linking diseases, drugs, and adverse reactionsMedical text mining: Linking diseases, drugs, and adverse reactions
Medical text mining: Linking diseases, drugs, and adverse reactions
 
Visualization of large-scale protein and disease networks
Visualization of large-scaleprotein and disease networksVisualization of large-scaleprotein and disease networks
Visualization of large-scale protein and disease networks
 
Medical bioinformatics: Current trends, industry needs, and core competencies
Medical bioinformatics: Current trends, industry needs, and core competenciesMedical bioinformatics: Current trends, industry needs, and core competencies
Medical bioinformatics: Current trends, industry needs, and core competencies
 
Cellular Network Biology
Cellular Network BiologyCellular Network Biology
Cellular Network Biology
 
Open data and open access - A biomedical data- and text-mining perspective
Open data and open access - A biomedical data- and text-mining perspectiveOpen data and open access - A biomedical data- and text-mining perspective
Open data and open access - A biomedical data- and text-mining perspective
 
Networks of proteins and diseases
Networks of proteins and diseasesNetworks of proteins and diseases
Networks of proteins and diseases
 
Disease systems biology
Disease systems biologyDisease systems biology
Disease systems biology
 
Disease Systems Biology
Disease Systems BiologyDisease Systems Biology
Disease Systems Biology
 
Large-scale integration of data and text
Large-scale integration of data and textLarge-scale integration of data and text
Large-scale integration of data and text
 
Mayo presentation 2016
Mayo presentation 2016Mayo presentation 2016
Mayo presentation 2016
 

More from Lars Juhl Jensen

More from Lars Juhl Jensen (20)

One tagger, many uses: Illustrating the power of dictionary-based named entit...
One tagger, many uses: Illustrating the power of dictionary-based named entit...One tagger, many uses: Illustrating the power of dictionary-based named entit...
One tagger, many uses: Illustrating the power of dictionary-based named entit...
 
One tagger, many uses: Simple text-mining strategies for biomedicine
One tagger, many uses: Simple text-mining strategies for biomedicineOne tagger, many uses: Simple text-mining strategies for biomedicine
One tagger, many uses: Simple text-mining strategies for biomedicine
 
Extract 2.0: Text-mining-assisted interactive annotation
Extract 2.0: Text-mining-assisted interactive annotationExtract 2.0: Text-mining-assisted interactive annotation
Extract 2.0: Text-mining-assisted interactive annotation
 
Network visualization: A crash course on using Cytoscape
Network visualization: A crash course on using CytoscapeNetwork visualization: A crash course on using Cytoscape
Network visualization: A crash course on using Cytoscape
 
STRING & STITCH : Network integration of heterogeneous data
STRING & STITCH: Network integration of heterogeneous dataSTRING & STITCH: Network integration of heterogeneous data
STRING & STITCH : Network integration of heterogeneous data
 
Biomedical text mining: Automatic processing of unstructured text
Biomedical text mining: Automatic processing of unstructured textBiomedical text mining: Automatic processing of unstructured text
Biomedical text mining: Automatic processing of unstructured text
 
Network Biology: A crash course on STRING and Cytoscape
Network Biology: A crash course on STRING and CytoscapeNetwork Biology: A crash course on STRING and Cytoscape
Network Biology: A crash course on STRING and Cytoscape
 
Cellular networks
Cellular networksCellular networks
Cellular networks
 
Cellular Network Biology: Large-scale integration of data and text
Cellular Network Biology: Large-scale integration of data and textCellular Network Biology: Large-scale integration of data and text
Cellular Network Biology: Large-scale integration of data and text
 
Statistics on big biomedical data: Methods and pitfalls when analyzing high-t...
Statistics on big biomedical data: Methods and pitfalls when analyzing high-t...Statistics on big biomedical data: Methods and pitfalls when analyzing high-t...
Statistics on big biomedical data: Methods and pitfalls when analyzing high-t...
 
STRING & related databases: Large-scale integration of heterogeneous data
STRING & related databases: Large-scale integration of heterogeneous dataSTRING & related databases: Large-scale integration of heterogeneous data
STRING & related databases: Large-scale integration of heterogeneous data
 
Tagger: Rapid dictionary-based named entity recognition
Tagger: Rapid dictionary-based named entity recognitionTagger: Rapid dictionary-based named entity recognition
Tagger: Rapid dictionary-based named entity recognition
 
Network Biology: Large-scale integration of data and text
Network Biology: Large-scale integration of data and textNetwork Biology: Large-scale integration of data and text
Network Biology: Large-scale integration of data and text
 
Network biology: Large-scale integration of data and text
Network biology: Large-scale integration of data and textNetwork biology: Large-scale integration of data and text
Network biology: Large-scale integration of data and text
 
Network biology: Large-scale integration of data and text
Network biology: Large-scale integration of data and textNetwork biology: Large-scale integration of data and text
Network biology: Large-scale integration of data and text
 
Biomarker bioinformatics: Network-based candidate prioritization
Biomarker bioinformatics: Network-based candidate prioritizationBiomarker bioinformatics: Network-based candidate prioritization
Biomarker bioinformatics: Network-based candidate prioritization
 
The Art of Counting: Scoring and ranking co-occurrences in literature
The Art of Counting: Scoring and ranking co-occurrences in literatureThe Art of Counting: Scoring and ranking co-occurrences in literature
The Art of Counting: Scoring and ranking co-occurrences in literature
 
Text-mining-based retrieval of protein networks
Text-mining-based retrieval of protein networksText-mining-based retrieval of protein networks
Text-mining-based retrieval of protein networks
 
Gene association networks: Large-scale integration of data and text
Gene association networks: Large-scale integration of data and textGene association networks: Large-scale integration of data and text
Gene association networks: Large-scale integration of data and text
 
Protein association networks: Large-scale integration of data and text
Protein association networks: Large-scale integration of data and textProtein association networks: Large-scale integration of data and text
Protein association networks: Large-scale integration of data and text
 

Recently uploaded

The Mariana Trench remarkable geological features on Earth.pptx
The Mariana Trench remarkable geological features on Earth.pptxThe Mariana Trench remarkable geological features on Earth.pptx
The Mariana Trench remarkable geological features on Earth.pptx
seri bangash
 
Porella : features, morphology, anatomy, reproduction etc.
Porella : features, morphology, anatomy, reproduction etc.Porella : features, morphology, anatomy, reproduction etc.
Porella : features, morphology, anatomy, reproduction etc.
Silpa
 
Module for Grade 9 for Asynchronous/Distance learning
Module for Grade 9 for Asynchronous/Distance learningModule for Grade 9 for Asynchronous/Distance learning
Module for Grade 9 for Asynchronous/Distance learning
levieagacer
 
Human genetics..........................pptx
Human genetics..........................pptxHuman genetics..........................pptx
Human genetics..........................pptx
Silpa
 
Asymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 b
Asymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 bAsymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 b
Asymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 b
Sérgio Sacani
 
Conjugation, transduction and transformation
Conjugation, transduction and transformationConjugation, transduction and transformation
Conjugation, transduction and transformation
Areesha Ahmad
 

Recently uploaded (20)

GBSN - Microbiology (Unit 2)
GBSN - Microbiology (Unit 2)GBSN - Microbiology (Unit 2)
GBSN - Microbiology (Unit 2)
 
Introduction of DNA analysis in Forensic's .pptx
Introduction of DNA analysis in Forensic's .pptxIntroduction of DNA analysis in Forensic's .pptx
Introduction of DNA analysis in Forensic's .pptx
 
The Mariana Trench remarkable geological features on Earth.pptx
The Mariana Trench remarkable geological features on Earth.pptxThe Mariana Trench remarkable geological features on Earth.pptx
The Mariana Trench remarkable geological features on Earth.pptx
 
PSYCHOSOCIAL NEEDS. in nursing II sem pptx
PSYCHOSOCIAL NEEDS. in nursing II sem pptxPSYCHOSOCIAL NEEDS. in nursing II sem pptx
PSYCHOSOCIAL NEEDS. in nursing II sem pptx
 
An introduction on sequence tagged site mapping
An introduction on sequence tagged site mappingAn introduction on sequence tagged site mapping
An introduction on sequence tagged site mapping
 
Velocity and Acceleration PowerPoint.ppt
Velocity and Acceleration PowerPoint.pptVelocity and Acceleration PowerPoint.ppt
Velocity and Acceleration PowerPoint.ppt
 
Porella : features, morphology, anatomy, reproduction etc.
Porella : features, morphology, anatomy, reproduction etc.Porella : features, morphology, anatomy, reproduction etc.
Porella : features, morphology, anatomy, reproduction etc.
 
Thyroid Physiology_Dr.E. Muralinath_ Associate Professor
Thyroid Physiology_Dr.E. Muralinath_ Associate ProfessorThyroid Physiology_Dr.E. Muralinath_ Associate Professor
Thyroid Physiology_Dr.E. Muralinath_ Associate Professor
 
GBSN - Microbiology (Unit 3)
GBSN - Microbiology (Unit 3)GBSN - Microbiology (Unit 3)
GBSN - Microbiology (Unit 3)
 
Dr. E. Muralinath_ Blood indices_clinical aspects
Dr. E. Muralinath_ Blood indices_clinical  aspectsDr. E. Muralinath_ Blood indices_clinical  aspects
Dr. E. Muralinath_ Blood indices_clinical aspects
 
Module for Grade 9 for Asynchronous/Distance learning
Module for Grade 9 for Asynchronous/Distance learningModule for Grade 9 for Asynchronous/Distance learning
Module for Grade 9 for Asynchronous/Distance learning
 
Human genetics..........................pptx
Human genetics..........................pptxHuman genetics..........................pptx
Human genetics..........................pptx
 
pumpkin fruit fly, water melon fruit fly, cucumber fruit fly
pumpkin fruit fly, water melon fruit fly, cucumber fruit flypumpkin fruit fly, water melon fruit fly, cucumber fruit fly
pumpkin fruit fly, water melon fruit fly, cucumber fruit fly
 
Use of mutants in understanding seedling development.pptx
Use of mutants in understanding seedling development.pptxUse of mutants in understanding seedling development.pptx
Use of mutants in understanding seedling development.pptx
 
Human & Veterinary Respiratory Physilogy_DR.E.Muralinath_Associate Professor....
Human & Veterinary Respiratory Physilogy_DR.E.Muralinath_Associate Professor....Human & Veterinary Respiratory Physilogy_DR.E.Muralinath_Associate Professor....
Human & Veterinary Respiratory Physilogy_DR.E.Muralinath_Associate Professor....
 
GBSN - Biochemistry (Unit 1)
GBSN - Biochemistry (Unit 1)GBSN - Biochemistry (Unit 1)
GBSN - Biochemistry (Unit 1)
 
Zoology 5th semester notes( Sumit_yadav).pdf
Zoology 5th semester notes( Sumit_yadav).pdfZoology 5th semester notes( Sumit_yadav).pdf
Zoology 5th semester notes( Sumit_yadav).pdf
 
Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS ESCORT SERVICE In Bhiwan...
Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS  ESCORT SERVICE In Bhiwan...Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS  ESCORT SERVICE In Bhiwan...
Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS ESCORT SERVICE In Bhiwan...
 
Asymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 b
Asymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 bAsymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 b
Asymmetry in the atmosphere of the ultra-hot Jupiter WASP-76 b
 
Conjugation, transduction and transformation
Conjugation, transduction and transformationConjugation, transduction and transformation
Conjugation, transduction and transformation
 

Medical Data Mining