Welcome to the Goodarzi Lab!

The Goodarzi Lab combines modern experimental and computational technologies to understand complex human diseases at a molecular level. We are predominantly focused on metastatic progression in multiple cancers and neurodegenerative diseases as the biggest challenges to human health in the 21st century.
Goodarzi Lab

Research Focus

1

Developing specialized AI/ML models to enable in silico functional genomics.

Advances in artificial intelligence (AI) and deep learning have fundamentally revolutionized many aspects of our lives, and research and technology is no exception. Application of AI models to a variety of problems in life sciences is a rapidly growing field. As pioneers in this field, we have a long history of developing neural network models to answer key questions in genomics. Modern novel neural network architectures as well as access to the computational resources required to deploy them has been a boon for computational genomics. From interpretable models for studying long-range combinatorial injections in DNA/RNA to large language models and foundation models in chemistry and genomics, we have enjoyed a resurgence in the promise of AI/ML in biology.

2

Dissecting the evolutionary dynamics of cancer progression and tumor-environment interactions.

Over the past decade, cancer progression has emerged as a complex evolutionary process with many dynamic forces at play at every step. The resulting widespread reprogramming of the gene expression landscape in cancer cells is a hallmark of cancer development. While the focus of cancer biologists has been on the key signaling pathways and regulatory programs that are hijacked by cancer cells, my group has been interested in the possibility of emergent regulatory modules that are engineered by cancer cells and fall outside of existing regulatory networks. This question led us to the discovery of orphan non-coding RNAs (oncRNAs), a class of small non-coding RNAs that are generally not expressed in normal tissue. We have demonstrated that cancer cells can adopt oncRNAs to carry out new regulatory functions that promote metastatic progression.

3

Discovering novel post-transcriptional regulatory programs that drive human disease

Complex human pathologies, such as cancer and neurodegenerative diseases, are associated with widespread dysregulations in the regulatory programs that govern gene expression dynamics. Our work aims to systematically discover post-transcriptional regulatory pathways that contribute to disease using unbiased approaches. In recent years, we have identified a novel class of tRNA fragments (tiRNAs) that suppress breast cancer metastasis and a cis-acting RNA element that drives alternative splicing programs in breast cancer metastasis. Our combined experimental and computational approach promises to uncover new mechanisms of post-transcriptional gene regulation in a variety of disease contexts.

Publications

Deep generative AI models analyzing circulating orphan non-coding RNAs enable detection of early-stage lung cancer

Deep generative AI models analyzing circulating orphan non-coding RNAs enable detection of early-stage lung cancer

Mehran Karimzadeh, Amir Momen-Roknabadi, Taylor B. Cavazos, Yuqi Fang, Nae-Chyun Chen, Michael Multhaup, Jennifer Yen, Jeremy Ku, Jieyang Wang, Xuan Zhao, Philip Murzynowski, Kathleen Wang, Rose Hanna, Alice Huang, Diana Corti, Dang Nguyen, Ti Lam, Seda Kilinc, Patrick Arensdorf, Kimberly H. Chau, Anna Hartwig, Lisa Fish, Helen Li, Babak Behsaz, Olivier Elemento, James Zou, Fereydoun Hormozdiari, Babak Alipanahi, Hani Goodarzi.

Nature CommunicationsNovember 2024

All Publications

Team

Hani Goodarzi, PhD
Core Investigator

Hani Goodarzi, PhD

Hani received his Ph.D. in quantitative and computational biology at Princeton University. He is an Associate Professor for the Department of Biochemistry and Biophysics at the University of California, San Francisco. He has received the Vilcek Prize for Creative Promise and the AACR-MPM Transformative Cancer Research Award. He is also a past recipient of the Martin and Rose Wachtel Award in Cancer Research and an American Cancer Society scholar. Hani has led his own research group at UCSF since 2016, working at the intersection of machine learning and cancer biology. His team brings together a mix of students and researchers across a range of backgrounds and experiences to tackle fundamental challenges facing life sciences. In a number of studies, his lab has used computational tools to show how RNA-encoded information is over-written by cancer cells to drive pathological progression of this disease. These discoveries have uncovered new ways through which we can target human cancers.

Current Members

Heather Karner, PhD
Postdoctoral Scholar

Heather Karner, PhD

Joint with Vijay Ramani
Department of Biochemistry & Biophysics Helen Diller Cancer Center Institute for Computational Health Sciences

Benedict Choi, PhD
Postdoctoral Scholar

Benedict Choi, PhD

Department of Biochemistry & Biophysics
Department of Urology Helen Diller Cancer Center

Siyu Chen, PhD
Postdoctoral Scholar

Siyu Chen, PhD

Department of Biochemistry & Biophysics
Department of Urology Helen Diller Cancer Center

Shaopu Zhou, PhD
Postdoctoral Scholar

Shaopu Zhou, PhD

Department of Biochemistry & Biophysics
Department of Urology Helen Diller Cancer Center

Kian (Hassan) Yousefi, PhD
Postdoctoral Scholar

Kian (Hassan) Yousefi, PhD

Department of Biochemistry & Biophysics
Department of Urology Helen Diller Cancer Center

Lishi Li, PhD
Postdoctoral Scholar

Lishi Li, PhD

Department of Biochemistry & Biophysics
Department of Urology Helen Diller Cancer Center

Jonathan Schmok, PhD
Postdoctoral Scholar

Jonathan Schmok, PhD

UC San Diego (PhD in Bioengineering)

Ali Emadi, PhD
Postdoctoral Scholar

Ali Emadi, PhD

New Jersey Institute of Technology, (PhD in Electrical Engineering)

Timo Hagen, PhD
Postdoctoral Scholar

Timo Hagen, PhD

RNA Chemical Biology, ETH Zurich

Bahar Zirak
Postdoctoral Scholar

Bahar Zirak

Biomedical Sciences Graduate Program

Matvei Khoroshkin
Graduate Student

Matvei Khoroshkin

Biological and Medical Informatics Program

Brian Woo
Graduate Student

Brian Woo

Biomedical Sciences Graduate Program

Sushil Sobti
Graduate Student

Sushil Sobti

Tetrad Graduate Program

Aidan Winters
Graduate Student

Aidan Winters

Joint with Luke Gilbert
Biological and Medical Informatics Program

Timmy Suh
Graduate Student

Timmy Suh

Biomedical Sciences Graduate Program

Brenda Melano
Graduate Student

Brenda Melano

Joint with Alejandro Sweet-Cordero
Pharmaceutical Sciences and Pharmacogenomics (PSPG) Graduate Program

Sean Lee
Research Associate

Sean Lee

Department of Biochemistry & Biophysics
Department of Urology

Trey Charbonneau
Research Associate

Trey Charbonneau

Department of Biochemistry & Biophysics
Department of Urology

Chris Carpenter
Research Associate

Chris Carpenter

Department of Biochemistry & Biophysics
Department of Urology

Khaled Alqahtani
Research Associate

Khaled Alqahtani

Department of Biochemistry & Biophysics
Department of Urology

Buyeon Um
Postdoctoral Scholar

Buyeon Um

DVM, PhD in biological science, Seoul National University

Yanyi Chu
Postdoctoral Scholar

Yanyi Chu

PhD, Bioinformatics, Shanghai Jiao Tong University

Lakshmi Ramakrishnan
Research Associate

Lakshmi Ramakrishnan

M.S. in Electrical Engineering, Southern Methodist University

Alumni

Lisa FishDirector of Research at Exai Bio
Hosseinali Asgharian, PhDPrincipal Bioinformatics Scientist at Roche AG
Sahar Tavakoli, PhDData Scientist at ProdermIQ, Inc.
Albertas NavickasTeam Leader at Institut Curie
Mehran KarimzadehSenior Scientist at Exai Bio
Johnny YuFounder and CSO at Stealth Startup
Myles HochmanRA at Octant
Scott Nanda
Arash KeshavarziPostdoc at Stanford
Jeff WangBioinformatics Scientist at Exai Bio
Phi NguyenGraduate Student at Harvard University
Darya DyachkovaData Scientist at Roc360
Bruce CulbertsonMSTP student at Columbia University
Sohit MiglaniGraduate Student at Princeton University
Kristle GarciaGraduate Student at Stanford University
Keyi YinMSTP student at UT Southwestern
Abolfazl ArabRA II at Arc Institute
Tanvi JoshiMPH/MBA Emory University
Meri OkorieGraduate Student
Simon Hoser, PhDSME Risk Profiling
Vishvak SubramanyamGraduate Student at UCSF BMI PhD Program
Ruhollah Moussavi Baygi, PhDPostdoc in Rohit Bose Lab at UCSF
Ziad Ahmed
Noam TeyssierScientist at the Arc Institute

Contact Us

We are looking for post docs in computational biology, RNA biology, and cancer. We accept graduate students from Tetrad, BMS, BMI and IPQB programs at UCSF. Students in other programs at UCSF, UC Berkeley and Stanford are also encouraged to rotate with us. Please send a cover letter and your CV to hani.goodarzi@arcinstitute.org.

Address

Arc Institute
3181 Porter Dr
Palo Alto, CA 94304
info@arcinstitute.org
Arc Institute Location