Towards a zoomable cell abstract cell natural coordinate system Data >48.000 3D Protein Structures...

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towards a zoomable cell

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abstract cellnatural coordinate systemData

>48.000 3D ProteinStructures from PDB

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A IHGFB C D E

>200.000 Images from scientific publications

1

Computer Graphicsand Visualization

TECHNISCHEUNIVERSITÄTDRESDEN

Zoomable Cell

Stefan Gumhold Michael Schröder

Norbert Blenn Anne Tuukkanen

Marcel Spehr Matthias Reimann

Computer Graphicsand Visualization

Zoomable Cell, SPP 1335, Kickoff Meeting, 9.12.08, Dagstuhl 3

Goals Data analysis

Natural coordinate system (NCS) Mapping of images from literature to NCS 3D models of complexes in NCS

Visualization aggregation of images, volumes and 3D models Rendering across scale from 10m to 1Å Natural adjustment of visualization parameters with

dynamic labeling

HCI support for Virtual Reality environments speech control and input device development flexible navigation community support through web integration

Impact Interface life scientists „from different scales“ data aggregation and analysis platform production of illustrative materials

Computer Graphicsand Visualization

Zoomable Cell, SPP 1335, Kickoff Meeting, 9.12.08, Dagstuhl 4

Human CellsNew Problems

Several different instances of the same type

each instance is flexible

cells are treated badly before imaging

very different imaging modalities are used

Deformation Framework

Computer Graphicsand Visualization

Zoomable Cell, SPP 1335, Kickoff Meeting, 9.12.08, Dagstuhl 5

Various Data Types

cell

nucleus

pore

complexes

proteins

primitives, smooth surfaces

implicit surfaces

height fields

images: 2D, 3D, perspective

images: 2D, 3D, perspective

Computer Graphicsand Visualization

Zoomable Cell, SPP 1335, Kickoff Meeting, 9.12.08, Dagstuhl 6

Data Augmentation define reference models

for each dataset scale imaging modality features

points curves regions

labeling of features

for pairs of datasets feature mapping additional alignment information

nucleolusenvelop

pore

Computer Graphicsand Visualization

Zoomable Cell, SPP 1335, Kickoff Meeting, 9.12.08, Dagstuhl 7

Integration of Datasets

Segmentation

FeatureDetection

Labeling

non-rigidRegistration

Computer Graphicsand Visualization

Zoomable Cell, SPP 1335, Kickoff Meeting, 9.12.08, Dagstuhl 8

Deformation

reference model

Computer Graphicsand Visualization

Zoomable Cell, SPP 1335, Kickoff Meeting, 9.12.08, Dagstuhl 9

Plan to a Solution

start with fully interactive tools

add automation step by step with full interactivity for corrections

find features that persist over different scales

develop learning based segmentation approaches

exploit mutual information to register datasets of different dimension and

modality

Computer Graphicsand Visualization

Zoomable Cell, SPP 1335, Kickoff Meeting, 9.12.08, Dagstuhl 10

Visualization Engine protein structures

primitive splatting tubes, surfaces deferred shading sorting based transparency

3d surface models LOD based rendering depth peeling based transparency

Images & Volumes volume rendering compression transfer functions

Computer Graphicsand Visualization

Example Images

Computer Graphicsand Visualization

Query Based Exploration of Images

Available image information

• Expert labeled text (categorical)

• Unstructured information of related text (textual)

• Inherent image features (abstract description of image appearance)

More reliable and structured

Less reliable and structured

Navigation/Exploration

• Around 100.000 images currently available to us• Even with automatic analysis one needs supporting browsing techniques• If we have features that measure appropriate image similarities:

– Hierarchical Browsing– Fish-Eye View

Hierarchical Browsing

Fish-Eye View

Methods to structure image data set

• By hand• Automatic analysis (off-the-shelf methods)

– Unsupervised (Clustering)– Supervised (Multiclass Support Vector machines)

• Need for appropriate problem oriented feature set

Image Feature Definition

• Vast numbers of image descriptors are available• Need for general purpose image descriptors because of wide variety of

image origins• Standardized Multimedia content description (MPEG-7)

Class information from Image Features

1. Definition of semantic classes (assisted and manually, Gene Ontology labels)

2. Relation of abstract image descriptors to semantic classes (training, learning)

3. Evaluation of generalization ability

GoImage – Semantic Image Search

Comprehensive protein-interaction mapping projects underway

What is the cost of completing an interactome map and what is the best strategy for minimizing the cost?

How can quality and coverage of interaction data be maximized?

GoImage – Semantic Image Search

GoImage – Semantic Image Search

Refinement of a search for membranes through selecting nuclear envelope p.a.