Integrating Clinical Cancer and PTM Proteomics Data Identifies a Mechanism of ACK1 Kinase Activation

Author:

Balasooriya Eranga R.123ORCID,Madhusanka Deshan14ORCID,López-Palacios Tania P.14ORCID,Eastmond Riley J.1ORCID,Jayatunge Dasun14ORCID,Owen Jake J.1ORCID,Gashler Jack S.1ORCID,Egbert Christina M.1ORCID,Bulathsinghalage Chanaka5ORCID,Liu Lu5ORCID,Piccolo Stephen R.6ORCID,Andersen Joshua L.14ORCID

Affiliation:

1. 1The Fritz B. Burns Cancer Research Laboratory, Department of Chemistry and Biochemistry, Brigham Young University, Provo, Utah.

2. 2Center for Cancer Research, Massachusetts General Hospital, Boston, Massachusetts.

3. 3Dept. of Medicine, Harvard Medical School, Boston, Massachusetts.

4. 4Department of Oncological Sciences and Huntsman Cancer Institute, University of Utah School of Medicine, Salt Lake City, Utah.

5. 5Department of Computer Science, North Dakota State University, Fargo, North Dakota.

6. 6Department of Biology, Brigham Young University, Provo, Utah.

Abstract

Abstract Beyond the most common oncogenes activated by mutation (mut-drivers), there likely exists a variety of low-frequency mut-drivers, each of which is a possible frontier for targeted therapy. To identify new and understudied mut-drivers, we developed a machine learning (ML) model that integrates curated clinical cancer data and posttranslational modification (PTM) proteomics databases. We applied the approach to 62,746 patient cancers spanning 84 cancer types and predicted 3,964 oncogenic mutations across 1,148 genes, many of which disrupt PTMs of known and unknown function. The list of putative mut-drivers includes established drivers and others with poorly understood roles in cancer. This ML model is available as a web application. As a case study, we focused the approach on nonreceptor tyrosine kinases (NRTK) and found a recurrent mutation in activated CDC42 kinase-1 (ACK1) that disrupts the Mig6 homology region (MHR) and ubiquitin-association (UBA) domains on the ACK1 C-terminus. By studying these domains in cultured cells, we found that disruption of the MHR domain helps activate the kinase while disruption of the UBA increases kinase stability by blocking its lysosomal degradation. This ACK1 mutation is analogous to lymphoma-associated mutations in its sister kinase, TNK1, which also disrupt a C-terminal inhibitory motif and UBA domain. This study establishes a mut-driver discovery tool for the research community and identifies a mechanism of ACK1 hyperactivation shared among ACK family kinases. Implications: This research identifies a potentially targetable activating mutation in ACK1 and other possible oncogenic mutations, including PTM-disrupting mutations, for further study.

Funder

National Institute of General Medical Sciences

American Cancer Society

National Science Foundation

Publisher

American Association for Cancer Research (AACR)

Subject

Cancer Research,Oncology,Molecular Biology

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