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Thomas B. Knudsen, PhD Developmental Systems Biologist, US EPA National Center for Computational Toxicology CSS - Virtual Tissue Models Project [email protected] ORCID 0000-0002-5036-596x Computational Systems Toxicology: Recapitulating the logistical dynamics of cellular response networks in virtual tissue models “Advancing Computational and Systems Toxicology for the effective design of safer chemical and pharmaceutical products” EUROTOX 2017 - Bratislava DISCLAIMER: The views expressed are those of the presenter and do not necessarily reflect Agency policy.

Computational Systems Toxicology: recapitulating the

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Page 1: Computational Systems Toxicology: recapitulating the

Thomas B. Knudsen, PhDDevelopmental Systems Biologist, US EPA

National Center for Computational ToxicologyCSS - Virtual Tissue Models Project

[email protected] 0000-0002-5036-596x

Computational Systems Toxicology:

Recapitulating the logistical dynamics of cellular response networks

in virtual tissue models

“Advancing Computational and Systems Toxicology for the effective design of safer chemical and pharmaceutical products”EUROTOX 2017 - Bratislava

DISCLAIMER: The views expressed are those of the presenter and do not necessarily reflect Agency policy.

Page 2: Computational Systems Toxicology: recapitulating the

In a nutshell …

• Advances in biomedical, engineering, and computational sciences enable HTS profiling of the chemical landscape (ToxCast/Tox21).

• HTS data streams can support integrated approaches to testing and assessment but must be tied in some way to biological understanding (MOAs, AOPs).

• Considerable mechanistic knowledge exists about cellular networks that pattern tissue development (cell signaling).

• Information must be collected, organized, and assimilated into in silico models that link HTS data (in vitro) to apical outcome (in vivo) and back (predictive toxicology).

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Virtual Embryo: an array of systems models to forward- and reverse-engineer

developmental toxicity for mechanistic understanding and predictive toxicology.

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• Modeling biological systems is a major task of systems biology, as most cellular phenomena are governed by interconnected dynamical networks.- cell growth, proliferation, adhesion, differentiation, polarization, motility, apoptosis, …- ECM synthesis, reaction-diffusion gradients, clocks, mechanical boundaries, fluid flow, …

• ABMs recapitulate cellular networks show how complex processes are regulated and how their disruption contributes to disease at a higher level of biological organization.- reconstruct development cell-by-cell, interaction-by-interaction- pathogenesis following synthetic knockdown (cybermorphs)- introduce ToxCast lesions into a computer simulation

- return quantitative predictions of where, when and how the defect arises.

Cellular Agent-Based Models (ABMs)

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1. Reverse-engineering the system: top-down scaling

• Suppose we know an apical outcome (eg, cleft palate), how far can an ABM take us to inferring a key event?

Hutson et al. (2017) Chem Res Toxicol

SEM

s o

f h

um

an

pa

late

by

K S

ulik

, UN

C

Palatal fusion in silicoPalatal fusion in vivo

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Hacking the control network ‘Cybermorphs’

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Cybermorph ToxCast lesion: Captan-induced cleft palate in rabbits

Ass

ay r

esp

on

se

EGF

TGFb

µM concentration

fusion no fusion

OUTPUT: tipping point mapped toHTS concentration response

(4 µM)

Captan in ToxRefDBNOAEL = 10 mg/kg/dayLOAEL = 30 mg/kg/day

OUTPUT: tipping point predicted bycomputational dynamics

(hysteresis switch)

HTTK pregnancy model predicts 2.39 mg/kg/day Captan would achieve a

steady state concentration of 4 µM in the fetal plasma

INPUT: Captan in ToxCast

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2. Forward-engineering the system: bottom-up scaling

• Suppose we know a molecular effect (eg, ToxCast lesion), how far can an ABM take us to hypothesizing an apical outcome?

Saili et al. (2017) manuscript in preparation

BBB Phylogeny BBB Ontogeny - >90 genes, >5 cell types

Mancozeb

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F Ginhoux, Aymeric Silvan – A*STAR, Singapore

Computational dynamics of brain angiogenesis

Tata et al. (2015) Mechanism Devel

VEGF-A gradient: NPCs in subventricular zone

normal mouse, E13.5 microglia-depleted

We are building and testing computer models formulated around novel hypotheses such as ‘chemical

disruption of microglia perturbs brain angiogenesis’.

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In silico cascading dose scenario

CSF1RVEGFR3VEGFR2

Mancozeb in ToxCast

INPUT 0.03 µMOUTPUT: predicted dNEL

INPUT 0.3 µM: AC50 CSF1ROUTPUT: fewer microglia drawn to EC-tip cells

INPUT 2.0 µM: AC80 CSF1R + AC50 VEGFR3OUTPUT: overgrowth of EC-stalk cells

INPUT 6.0 µM: AC95 CSF1R + AC85 VEGFR3 + AC50 VEGFR2OUTPUT: loss of directional sprouting

endothelial tip cellendothelial stalk cellmicroglial cell

Zirlinden et al. (2017) manuscript in preparation10

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SYSTOX

HTS

HTK

SAR

MPS

AOP

ABM

Computational synthesis and integration

computationalchemistry

bioactivity profiles

kinetics &dosimetry

microphysiological systems

pathways& networks

computationaldynamics

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Todd Zurlinden – NCCTKate Saili – NCCTRichard Judson - NCCTNancy Baker – Leidos / NCCTRichard Spencer – ARA / EMVLShane Hutson – Vanderbilt U

Special Thanks

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