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The science behind ModelIt

From immunology research to every classroom

ModelIt was born in a university research lab where Dr. Tomas Helikar was building computational models of the human immune system. The same technology that helps scientists discover drugs and fight disease now helps K-12 students think like scientists.

282
NGSS-aligned lessons
27+
Universities worldwide
Where it began

A computational biologist asks a different question

Most scientists in Dr. Helikar's field build computational models to understand disease. He did too. But then he asked: what if students could use these same tools to understand the world around them?

01

Modeling the Human Immune System

Dr. Helikar's lab builds comprehensive computational models of CD4+ T-cell signaling, mapping how the immune system decides to fight infection. These models identify drug targets for rheumatoid arthritis, multiple sclerosis, and cancer.

Puniya et al., PLOS Computational Biology, 2021

02

Building Digital Twins of Immunity

His team co-authored the roadmap for building personalized digital twins of the immune system — computational replicas that could one day predict exactly how your body will respond to a treatment, a vaccine, or a new infection.

Laubenbacher, Helikar et al., NPJ Digital Medicine, 2022

03

Fighting COVID-19 with Computation

When COVID-19 hit, Dr. Helikar joined an international consortium building the COVID-19 Disease Map — a massive computational knowledge repository mapping how SARS-CoV-2 hijacks human cells. Computation met crisis.

Ostaszewski et al., Molecular Systems Biology, 2021

04

Discovering Drugs Through Models

The same digital modeling approach powers drug discovery in immuno-oncology. Dr. Helikar's meta-analysis of quantitative systems pharmacology models integrated with machine learning revealed how computational modeling accelerates finding new treatments.

Aghamiri, Amin & Helikar, J. Pharmacokinetics, 2021

The journey

From research breakthrough to classroom tool

This is the story of a technology that traveled from a university biochemistry lab to K-12 classrooms across the country. Every step was backed by peer-reviewed research.

2008

The breakthrough: emergent decision-making

Published in the Proceedings of the National Academy of Sciences, Dr. Helikar demonstrated that cellular networks function as pattern recognition systems. Digital models can capture how cells make decisions — sharp, non-fuzzy classifications even in the face of noise. The mathematical foundation was laid.

PNASLandmark paper
2012

Cell Collective is born

What if you didn't need to be a programmer to build a computational model? Dr. Helikar and his team created Cell Collective — a web-based platform where anyone could construct, simulate, and analyze digital models collaboratively. No code. No advanced math. Just science. Universities took notice — Carnegie Mellon, UCLA, Caltech, Brown, Columbia, and dozens more adopted it for systems biology courses.

BMC Systems BiologyOpen access
2015

Proof: it works in the curriculum

Cell Collective was successfully implemented both as a standalone In Silico Biology course and as modules integrated into existing biology courses. Students didn't just learn — they produced conference presentations and peer-reviewed publications. The integration model that would later power ModelIt was validated.

PLoS Computational Biology
2020

The neuroscience proof

Using fMRI brain imaging, researchers showed that students who simulated computational models built fundamentally different neural representations than students who simply read about the same systems. Even when test scores appeared similar, simulation activated deeper brain pathways. This was neuroscience-level proof: hands-on computational modeling changes how the brain processes science.

CBE — Life Sciences EducationfMRI study
2021

The manifesto: K-12 needs this

Writing in Trends in Molecular Medicine during the COVID-19 pandemic, Dr. Helikar made the case that changed everything. NGSS mandates computational modeling and systems thinking. But no tools existed that were both research-grade and accessible to students. Cell Collective occupied the critical middle ground. The question was no longer whether to bring it to K-12. It was how fast.

Trends in Molecular MedicineThe gap identified
2026

ModelIt goes to school

Discovery Collective launched ModelIt — 282 NGSS-aligned lessons spanning kindergarten through 12th grade. Every lesson ships with a Student Presentation, Student Activity Pack, and Teacher's Guide. The research-grade computational modeling platform that started in immunology now helps a kindergartner ask 'What do plants need to grow?' and a 12th grader model gene regulation in CRISPR systems. Same platform. Same scientific rigor. Every student.

K-12282 lessonsNGSS-aligned
"Students need access to research-grade modeling tools, not simplified educational toys. The gap between what students need and what they have access to is the problem we are solving."— Dr. Tomas Helikar, Trends in Molecular Medicine, 2021

The biomedical profession operates at the intersection of Biology, Technology, and Computation. Researchers build computational models of biological systems, simulate them, test predictions against real data, and refine. This is how drug discovery, precision medicine, and digital twins work.

ModelIt brings this exact cycle into K-12 classrooms. Students study biological systems, use computational technology to build models, apply computational thinking to analyze behavior, and revise their models based on evidence. They are doing real science — the same workflow used by researchers at universities and pharmaceutical labs worldwide.

What students learn

10 core biotech modeling skills

Every ModelIt lesson develops a subset of 10 modeling skills, organized into five progressive categories. These mirror the competencies used by professional biomedical researchers and computational biologists. Students practice them across grade bands, building fluency from kindergarten through 12th grade.

Model Construction

1
Add/Remove Components
2
Move Components
3
Name Components
4
Add/Remove Relationships

Simulation Setup

5
View/Remove Simulation Components
6
Set/Modify Activity Levels

Model Analysis

7
Identify Relationship Directionality
8
Identify Dependent/Independent Variables

Simulation Analysis

9
Identify Component Activity/Output

Debugging & Revision

10
Identify/Correct Model Errors

Model Construction → Simulation Setup → Model Analysis → Simulation Analysis → Debugging & Revision

For teachers

Drop ModelIt into your existing unit

ModelIt is a supplement, not a replacement for your science curriculum. Each lesson stands alone, but it becomes even more powerful when students revisit their model throughout a unit. Six ways to weave it in:

At the start of a unit

Use the lesson to introduce the phenomenon. Students build a 'first draft' model based on what they already know. Save it.

After a reading or lab

Have students reopen their model and update it: 'Based on what you just learned, would you add a component? Change a relationship?' Takes 10–15 minutes.

As a "what-if" tool

When students ask questions during class, say: 'Great question — go test that in your model!' Students run new scenarios and report back.

For peer discussion

Partners compare models: 'Why does your model have this arrow and mine doesn't?' Differences spark scientific debate using evidence.

As a presentation tool

Students project their model and walk the class through it live — showing components, running scenarios, answering audience challenges in real time.

At the end of a unit

Compare Day 1 model to final model. The growth IS the assessment — students see how their thinking evolved.

Standards alignment

282 lessons. Five frameworks. Every grade.

Every lesson is mapped to NGSS Performance Expectations and four additional national standards frameworks. Use the full alignment guide to plan units, fill in scope-and-sequence documents, or pitch ModelIt to your curriculum director.

NGSS

Next Generation Science Standards

The primary science content standards. Each lesson targets one or more NGSS Performance Expectations.

ISTE

International Society for Technology in Education

Technology and computational thinking. Lessons align to ISTE standards 1, 3, 4, 5, 6, and 7 through digital modeling, simulation, and data analysis.

NCHSE

National Health Science Standards

Career and technical education for health science pathways. Lessons address Foundation Standards 1, 3, 7, 9, and 11.

CA Health Ed

California Health Education Standards

Lessons addressing human body systems, disease, nutrition, and wellness align to grade-appropriate CA Health Ed content areas.

Biotech Skills

ModelIt Modeling Competencies

Ten skills across five categories that define computational modeling proficiency, K-12 to AP/honors.

Standards Alignment & Curriculum Guide

Full PDF with all 282 lessons, NGSS PE codes, ISTE standards, NCHSE foundation standards, biotech skill coverage, and CA Health Ed alignment by grade band and curriculum level.

Explore online guideDownload PDF
Worldwide adoption

Used by researchers at universities around the world

Researchers, teachers, and students across the world use Cell Collective — the same engine that powers ModelIt — to learn, build, and simulate biological models. The platform has been adopted at universities for systems biology, computational modeling, and biomedical research courses.

Carnegie Mellon logo
Carnegie Mellon
UCLA logo
UCLA
UC Irvine logo
UC Irvine
San Francisco State logo
San Francisco State
Columbia logo
Columbia
U of Toronto logo
U of Toronto
Caltech logo
Caltech
Manchester logo
Manchester
Virginia Tech logo
Virginia Tech
Purdue logo
Purdue
Waterloo logo
Waterloo
West Virginia logo
West Virginia
Brown logo
Brown
Tufts logo
Tufts
Georgetown logo
Georgetown
U of Nebraska logo
U of Nebraska
Emory logo
Emory
U Rochester logo
U Rochester
U Delaware logo
U Delaware
UC Merced logo
UC Merced
Anderson U logo
Anderson U
Rider U logo
Rider U
U of Kent logo
U of Kent
Southern Wesleyan logo
Southern Wesleyan
Lindenwood logo
Lindenwood
Grove City logo
Grove City
Hastings logo
Hastings
Carnegie Mellon logo
Carnegie Mellon
UCLA logo
UCLA
UC Irvine logo
UC Irvine
San Francisco State logo
San Francisco State
Columbia logo
Columbia
U of Toronto logo
U of Toronto
Caltech logo
Caltech
Manchester logo
Manchester
Virginia Tech logo
Virginia Tech
Purdue logo
Purdue
Waterloo logo
Waterloo
West Virginia logo
West Virginia
Brown logo
Brown
Tufts logo
Tufts
Georgetown logo
Georgetown
U of Nebraska logo
U of Nebraska
Emory logo
Emory
U Rochester logo
U Rochester
U Delaware logo
U Delaware
UC Merced logo
UC Merced
Anderson U logo
Anderson U
Rider U logo
Rider U
U of Kent logo
U of Kent
Southern Wesleyan logo
Southern Wesleyan
Lindenwood logo
Lindenwood
Grove City logo
Grove City
Hastings logo
Hastings

From research labs to K-12 classrooms

The same platform trusted by research universities is now available to K-12 students through ModelIt. Every lesson uses the Cell Collective engine, giving young learners access to the same computational tools used by professional scientists.

The evidence

Measured, published, peer-reviewed

Every claim is backed by research. Here is what the data shows.

8%

Learning gain for students using the platform, compared to 0% for the control group

Booth et al., CBE—Life Sciences Education, 2021

0

Gender bias detected. The platform produces equitable outcomes across all students.

Booth et al., 2021

43

Instructors across 37 institutions studied. Learning-focused features drove adoption (effect size 0.309).

Song, Helikar et al., CBE—LSE, 2023

fMRI

Neuroimaging confirmed simulation activates deeper brain processing than reading alone

Clark, Helikar & Dauer, CBE—LSE, 2020

SBML

Built on the international standard for biological model exchange. Dr. Helikar co-authored the specification.

Keating et al., Molecular Systems Biology, 2020

CURE

Compliant with emerging NIH-funded standards for Credible, Understandable, Reproducible, Extensible models.

Sauro, Helikar et al., ArXiv, 2025

Research foundation

The peer-reviewed evidence base

These published studies, led by Dr. Tomas Helikar and his team at Helikar Labs (University of Nebraska-Lincoln) and Discovery Collective, document best practices for teaching with the Cell Collective / ModelIt platform.

Peer-reviewed · BioScience

Bergan-Roller, H. E., Galt, N. J., Chizinski, C. J., Helikar, T., & Dauer, J. T. (2018). Simulated computational model lesson improves foundational systems thinking skills and conceptual knowledge in biology students. BioScience, 68(8), 612–621.

https://doi.org/10.1093/biosci/biy054

Peer-reviewed · Springer Nature (book chapter)

Dauer, J., Dauer, J., Lucas, L., Helikar, T., & Long, T. (2022). Supporting university student learning of complex systems: An example of teaching the interactive processes that constitute photosynthesis. In O. Ben Zvi Assaraf & M.-C. P. J. Knippels (Eds.), Fostering understanding of complex systems in biology education (pp. 63–82). Springer.

https://doi.org/10.1007/978-3-030-98144-0_4

Peer-reviewed · International Journal of Science Education

Lucas, L., Helikar, T., & Dauer, J. T. (2022). Revision as an essential step in modeling to support predicting, observing, and explaining cellular respiration system dynamics. International Journal of Science Education, 44(13), 2152–2179.

https://doi.org/10.1080/09500693.2022.2114815

Peer-reviewed · International Journal of Science Education

King, G. P., Bergan-Roller, H. E., Galt, N. J., Helikar, T., & Dauer, J. T. (2019). Modelling activities integrating construction and simulation supported explanatory and evaluative reasoning. International Journal of Science Education, 41(13), 1764–1786.

https://doi.org/10.1080/09500693.2019.1640914

Peer-reviewed · CBE — Life Sciences Education

Booth, C. S., Song, C., Howell, M. E., Rasquinha, A., Saska, A., Helikar, R., Sikich, S. M., Couch, B. A., van Dijk, K., Roston, R. L., & Helikar, T. (2021). Teaching metabolism in upper-division undergraduate biochemistry courses using online computational systems and dynamical models improves student performance. CBE—Life Sciences Education, 20(1), ar13.

https://doi.org/10.1187/cbe.20-05-0105

Peer-reviewed · CBE — Life Sciences Education

Clark, C. A. C., Helikar, T., & Dauer, J. T. (2020). Simulating a computational biological model, rather than reading, elicits changes in brain activity during biological reasoning. CBE—Life Sciences Education, 19(3), ar45.

https://doi.org/10.1187/cbe.19-11-0237

Bring research-grade science to your students

282 lessons. Every grade. Complete materials. Built on peer-reviewed computational biology research.

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