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Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet http://www.nada.kth.se/~stefan Data Mining in Schizophrenia Researc -preliminary
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Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Dec 14, 2015

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Page 1: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Stefan Arnborg, KTH, SICS

Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet

http://www.nada.kth.se/~stefan

Data Mining in Schizophrenia Research -preliminary

Page 2: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Data mining in science?

• Hasty decision making or eternal truth?

• Underpinning of findings?

• ...

Page 3: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.
Page 4: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Human Brain Informatics - HUBINHuman Brain Informatics - HUBIN

A project to accelerate research and development A project to accelerate research and development

to find new treatments for human brain diseaseto find new treatments for human brain disease

Page 5: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Human Brain Informatics - HUBIN

Intentions:

To develop a uniform database for brain

information from defined human subject groups

To implement data from many research

areas - “datadomains” - into the database

To perform statistical and datamining analyses using data from all the data domains

Page 6: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Leading causes of disability in the world, WHO (1990)

Cause of disability Total % of millions world total

1. Unipolar major depression 50.8 10.7

2. Iron deficiency anemia 22.0 4.7

3. Falls 22.0 4.6

4. Alcohol use 15.8 3.3

5. Chronic obstructive pulmonary disease 14.7 3.1

6. Bipolar disorder 14.1 3.0

7. Congenital anomalies 13.5 2.9

8. Osteoarthritis 13.3 2.8

9. Schizophrenia 12.1 2.6

10. Obsessive compulsive disorder 10.2 2.2

Page 7: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Schizophrenia -Questions and Clues

• Cause(s) of schizophrenia not known.• Does not appear in animals-no experimental clues.• Explanation models vary over time.• Disturbed neuronal circuitry in schizophrenia?

(currently hottest hypothesis)• Influenced by genotype or/and environment?

(clustering in families - but epidemiologic studies andstudies on adopted twins suggest both causes)

Page 8: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Schizophrenia -Questions and Clues

• Which processes result in disease?• Traces of disturbed development visible in MRI

(anatomy) and blood tests?• Genetic risk factors?• Causal pathways?

Page 9: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Hubin organizationHubin organization

Ethical groupEthical groupGöran Sedvall, ChairmanGöran Sedvall, Chairman

Ethical groupEthical groupGöran Sedvall, ChairmanGöran Sedvall, Chairman

Hubin ABHubin ABStig Larsson, ChairmanStig Larsson, ChairmanHåkan Hall, CEOHåkan Hall, CEO

Hubin ABHubin ABStig Larsson, ChairmanStig Larsson, ChairmanHåkan Hall, CEOHåkan Hall, CEO

Project staff Data domain responsibles

Management groupManagement groupHåkan Hall, Assoc. Prof. Håkan Hall, Assoc. Prof.

(project manager)(project manager)Stig Larsson, T.D. hcStig Larsson, T.D. hcGöran Sedvall, Prof.Göran Sedvall, Prof.Stefan Arnborg, Prof.Stefan Arnborg, Prof.Tom McNeil, Prof.Tom McNeil, Prof.Lars Therenius Prof.Lars Therenius Prof.

Management groupManagement groupHåkan Hall, Assoc. Prof. Håkan Hall, Assoc. Prof.

(project manager)(project manager)Stig Larsson, T.D. hcStig Larsson, T.D. hcGöran Sedvall, Prof.Göran Sedvall, Prof.Stefan Arnborg, Prof.Stefan Arnborg, Prof.Tom McNeil, Prof.Tom McNeil, Prof.Lars Therenius Prof.Lars Therenius Prof.

Scientific advisory boardScientific advisory boardGöran Sedvall, ChairmanGöran Sedvall, ChairmanNancy Andreasen, Univ of IowaNancy Andreasen, Univ of IowaPaul Greengard, Rockefeller UnivPaul Greengard, Rockefeller UnivTomas Hökfelt, Karolinska Inst.Tomas Hökfelt, Karolinska Inst.

Scientific advisory boardScientific advisory boardGöran Sedvall, ChairmanGöran Sedvall, ChairmanNancy Andreasen, Univ of IowaNancy Andreasen, Univ of IowaPaul Greengard, Rockefeller UnivPaul Greengard, Rockefeller UnivTomas Hökfelt, Karolinska Inst.Tomas Hökfelt, Karolinska Inst.

Page 10: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Preliminary analysis

Test case:144 subjects: 61 affected, 83 controlsVariables:•Diagnosis•Demography•Blood tests•Genetics•Anatomy (MRI)

Page 11: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

In vivo imaging

Magnetic resonance images (MRI)

Functional magnetic resonance images (fMRI)

Positron emission tomography (PET)

Single photon emission tomography (SPECT)

MRI

PET

In vitro imaging (whole hemispheres)

Autoradiography

In situ hybridization

ISHH

LAR

Types of images used in HUBIN

Page 12: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

T1 T2

T1

T2

CSFwhite

gray

Page 13: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Brain boxes

Picture fromBRAINS II manual,Magnotta et al,University of Iowa

Page 14: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Manually drawn vermis regions

ROIs drawn by GakuOkugawa

Page 15: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Single Nucleotide Polymorphism

A U G U U C C A U U A U U G U

A U G U U U C A U U A U U A U

RNA:

Protein A Phe

Phe

His

His

Tyr

Tyr

Cys

Phe

non-coding SNP

coding SNP

TyrProtein A’

Protein A can be slightly different from A´

Page 16: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Genes studied

• DBH dopamine beta-hydroxylase• DRD2 dopamine receptor D2 +• DRD3 dopamine receptor D3• HTR5A serotonin receptor 5A• NPY neuropeptide Y• SLC6A4 serotonin transporter• BDNF brain derived neurotrophic factor• NRG1 neuregulin +

Page 17: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Intracranial volume (ml)

Cumulative distribution

+ = schizo = controls

Elementary Visualizations MRI Intracranial volume

Page 18: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Elementary VisualizationsMRI data

Total CSF volumes (ml)

Cumulative distribution

+ = schizo = controls

p < 0.0002

Page 19: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

0 1 2 3 4 5 6 7 8 9 100

0.1

0.2

0.3

0.4

0.5

0.6

0.7

0.8

0.9

1

Gamma GTGamma GT

Cumulative distribution

+ = schizo = controls

p < 0.01

Blood dataGamma GT- alcohol marker

Page 20: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Men

Women25 30 35 40 45 50 55

0

0.1

0.2

0.3

0.4

0.5

0.6

0.7

0.8

0.9

1

Sub White-women

30 35 40 45 50 55 60 650

0.1

0.2

0.3

0.4

0.5

0.6

0.7

0.8

0.9

1

Sub White-men

Subcortical white

+ = schizo = controls

Subcortical white

+ = schizo = controls

Gender differences

MRI

Page 21: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Which methods to use?

• Visualizations, cdf and scatter plots, give intuitive grasp of variables - problems with many interrelated variables

• Statistical modelling required to decide significance of visible trend, and to rank effects

Page 22: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Statistical methods

• Bayesian methods intuitive and rational - but conventional testing required for publications

• Linear models - need to account for mixing and over-dispersion

• Discretization and Bayesian analysis of discrete distributions - intuitive, but information lost

• Non-parametric randomization tests - most sensitive and accomodates modern multiple testing paradigms

Page 23: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Statistical methods

• Bayesian methods intuitive and rational - but conventional testing required for publications

• Linear models - need to account for mixing and over-dispersion

• Discretization and Bayesian analysis of discrete distributions - intuitive, but information lost

• Non-parametric randomization tests - most sensitive and accomodates modern multiple testing paradigms

Page 24: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Bayes’ factor

• Choice between two hypotheses, H1 and H2,given experimental/observational data D

P(H1|D) P(D|H1) P(H1)P(H2|D) P(D|H2) P(H2)

Posterior odds Bayes factor prior odds

Page 25: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Hypotheses in test matrix

• H1: (no effect) a data column is generatedindependently of diagnosis (composite model)

• H2: the data for controls are generated by one composite model, for affected by another one.

Page 26: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

-2.5 -2 -1.5 -1 -0.5 0 0.5 1 1.5 2-2

-1.5

-1

-0.5

0

0.5

1

1.5

2

2.5

3

x

Non-parametric Bayesian methods-Do the three point sets have the sameunderlying distribution, or not?Which is the alternative hypothesis?

Page 27: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Graphical models

Y

Z

X

Y

Z

X

Y

Z

Xf(x,y,z)=f(x)f(y)f(z)

f(x,y,z)=f(x,z)f(x,y)/f(x)

f(x,y,z)

Page 28: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

V-structures,causality

X

Y

A

B

C

A

B

C

X

YA CA C | B

A CA C | B

V-structures detectablefrom observational data

Indistinguishable

A

B

C

f(x,y)=f(y|x)f(x) =f(x|y)f(y)

Page 29: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Pairs associated to Diagnosis

Y

Z

D

Y

Z

D

Y

Z

D

Y

Z

D

Y and Z co-vary differentlyfor Affected and Controls

Page 30: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Age-dependency of Posterior Superior Vermis

Age at MRI

Post sup vermis

+ = schizo = controls

Page 31: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

70 80 90 100 110 120 1300.08

0.1

0.12

0.14

0.16

0.18

0.2

0.22

0.24

ParWhite

0

No co-variation between Posterior inferior vermis and parietal white for affected

Parietal white

Post inf vermis

+ = schizo = controls

Page 32: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

MRI volumes, blood, demography

Dia

BrsCSF TemCSF

SubCSF TotCSF

Multivariate characterization by graphical models

Page 33: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Adding Vermis variables

Dia

BrsCSF TemCSF

PSV

Page 34: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

PSV has best explanatory power

affected - healthy

0.05 0.1 0.15 0.2 0.25 0.30

0.1

0.2

0.3

0.4

0.5

0.6

0.7

0.8

0.9

1

PS VermisPosterior superior vermis

+ = schizo = controls

Page 35: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Decision tree for DiagnosisMRI Data

A = schizC = controls() = misscls

Page 36: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Classification explains data!

XY

Z

XY

Z

H

W W

Page 37: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Autoclass1

Total gray

A= schizC= controls

Page 38: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Weak signals in genetics data

• Numerous investigations have indicated ‘almost significant’ signals of SNP:s to diagnosis

• Typically, these findings cannot be confirmed in other studies - populations genetically heterogeneous and measurements nonstandardized.

• We try to connect SNP:s both to diagnosis and to other phenotypical variables

• Multiple testing and weak signal problems.

Page 39: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

40 60 80 100 120 140 1600

0.1

0.2

0.3

0.4

0.5

0.6

0.7

0.8

0.9

1

FrCSF

0.0035:5 37 80

Empirical distribution by genotypeGene BDNF (schiz + controls)

Frontal CSF

A/A A/G G/G

Cumulativedistribution

Page 40: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Compensating multiple comparisons

• Bonferroni 1937: For level and n tests, use level /n

• Hochberg 1988: step-up procedure• Benjamini,Hochberg 1996: False Discovery

Rate• J. Storey, 2002: pFDRi, pFDRd• Bayesian interpretations being developed

(Wasserman & Genovese, 2002)

Page 41: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

0 20 40 60 80 100 120 1400

0.002

0.004

0.006

0.008

0.01

0.012

0.014

0.016

0.018

0.02

2-var associations abs(ac)

‘no effect’Observedp-values

FDRi 71

FDRd 62

Bonferroni-Hochberg-Benjamini methodsMRI and lab data

Number of p-values

p-values

Page 42: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

0 0.001 0.002 0.003 0.004 0.005 0.006 0.007 0.008 0.009 0.010

0.005

0.01

0.015

0.02

0.025

Page 43: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

0 0.5 10

0.2

0.4

0.6

0.8

1

0 0.5 10

0.2

0.4

0.6

0.8

1

0 0.5 10

0.2

0.4

0.6

0.8

1NRG1:CV2870393

Page 44: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

Significance model-dependent!

Linear additive effect on variable - heterozygote midway between homozygotes

Frontal CSF BDNF 0.001Serum T4 BDNF 0.001Subcortical Gray BDNF 0.001Frontal Gray BDNF 0.002LPK 01 NPY 0.002Corpuscular volume BDNF 0.003….

Page 45: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

SNP genotypes not all equal

Subcortical white HTR5A 0.008Temporal white HTR5A 0.01 Diagnosis DRD2 0.01

NRG1 0.005

Page 46: Stefan Arnborg, KTH, SICS Ingrid Agartz, Håkan Hall, Erik Jönsson, Anna Sillén, Göran Sedvall, Karolinska Institutet stefan Data.

That’s all, folks!

• High-quality databases for medical research of the HUBIN type open up for intelligent data analysis methods used in engineering and business

• Already with the limited data presently available, interesting clues emerge

• Long term effort - stable economy and engagement is vital.