Victor Velculescu
Liquid biopsies, AI, and early cancer detection
Professor
Department of Oncology
School of Medicine
Research Overview
The Cancer Genomics Lab has a history of practice-changing discoveries in cancer research. These include the first genome-wide sequence analysis in human cancers, identifying key genes and pathways dysregulated in tumorigenesis. Members of the group developed methods for global gene expression analyses and coined the word “transcriptome” to describe the patterns that could now obtained in cancer and other cells. This research revealed the genomic landscape of human cancers, including in breast, colorectal, brain, pancreatic, ovarian, and lung cancers. These analyses identified a variety of genes not previously known to be involved in neoplasia, including PIK3CA as one of the most highly mutated genes in human cancer. These discoveries have led to new FDA approved therapies against PI3K and IDH1, and diagnostic tests for comprehensive tumor profiling. More recently, our group has created non-invasive machine learning liquid biopsy approaches for early detection and monitoring of cancer patients. This work has provided new paradigms for understanding human cancer that have paved the way for precision medicine and benefited patients worldwide. Examples of our recent research efforts include:
- Detecting cancer early using machine learning analyses of non-invasive liquid biopsies: Our group has identified unique properties of cell-free DNA (cfDNA) of cancer patients and developed artificial intelligence technologies for early cancer detection. Our DNA Evaluation of Fragments (DELFI) approach uses machine learning to detect cancer-specific changes in the genome-wide cfDNA fragmentation profiles in the circulation. The observed “fragmentome” represents a compendium of changes in characteristics of cfDNA that can be used to detect patients with cancer and identify their tissue of origin. We have extended these analyses through genome-wide evaluation of mutation profiles and repeat landscapes in cfDNA. We have employed these methodologies for non-invasive early detection of patients with lung, liver, and ovarian and are extending these to other cancer types.
- Disease interception through early detection of disease response or progression: Noninvasive approaches for detection of tumor-specific mutations in cell-free DNA (cfDNA) have the potential to identify appropriate therapies as well as track a patient’s response to treatment, enabling effective and timely decisions. We have used both focused and genome-wide approaches to identify mechanisms of primary and acquired resistance in lung, colorectal, and other cancers. We have also developed noninvasive measures of molecular response and resistance and residual disease detection to targeted therapies, chemotherapy and immune checkpoint blockade approaches in colorectal, lung and other cancer types.
- Cancer genomics and the early changes in tumorigenesis: Our team provided some of the earliest insights into the complex genomic landscape of human cancer, identifying new genes and pathways not previously implicated in tumorigenesis, including changes in PIK3CA, IDH, and chromatin modifying genes, and using these analyses as a foundation for precision medicine for cancer patients. More recently, the group has focused on early events in tumorigenesis, providing genomic evidence and timing of lesions in the fallopian tube as the site of origin of high-grade serous ovarian cancers. New methodologies examining the “dark matter” of the genome have revealed the repeat landscapes of the cancer genome, identifying hundreds of changes in repeat elements that provide insights into mechanisms of tumorigenesis and may be useful diagnostically.
Additional Titles
Co-Director, Cancer Genetics and Epigenetics, Sidney Kimmel Cancer Center at the Johns Hopkins University School of Medicine
Topic Areas
Selected Publications
- Annapragada AV, Niknafs N, White JR, Bruhm DC, Cherry C, Medina JE, Adleff V, Hruban C, Mathios D, Foda ZH, Phallen J, Scharpf RB, Velculescu VE. Genome-wide repeat landscapes in cancer and cell-free DNA. Science Translational Medicine, 2024.
- Bruhm DC, Mathios D, Foda ZH, Annapragada AV, Medina JE, Adleff V, Chiao EJ, Ferreira L, Cristiano S, White JR, Mazzilli SA, Billatos E, Spira A, Zaidi AH, Mueller J, Kim AK, Anagnostou V, Phallen J, Scharpf RB, Velculescu VE. Single-molecule genome-wide mutation profiles of cell-free DNA for non-invasive detection of cancer. Nature Genetics, 2023.
- Foda ZH, Annapragada AV, Boyapati K, Bruhm DC, Vulpescu NA, Medina JE, Mathios D, Cristiano S, Niknafs N, Luu HT, Goggins MG, Anders RA, Sun J, Meta SH, Thomas DL, Kirk GD, Adleff V, Phallen J, Scharpf RB, Kim AK, Velculescu VE. Detecting Liver Cancer Using Cell-Free DNA Fragmentomes. Cancer Discovery, 2023.
- Mathios D, Johansen JS, Cristiano S, Medina JE, Phallen J, Larsen KR, Bruhm DC, Niknafs N, Ferreira L, Adleff V, Chiao JY, Leal A, Noe M, White JR, Arun AS, Hruban C, Annapragada AV, Jensen SØ, Ørntoft MW, Madsen AH, Carvalho B, de Wit M, Carey J, Dracopoli NC, Maddala T, Fang KC, Hartman AR, Forde PM, Anagnostou V, Brahmer JR, Fijneman RJA, Nielsen HJ, Meijer GA, Andersen CL, Mellemgaard A, Bojesen SE, Scharpf RB, Velculescu VE. Detection and characterization of lung cancer using cell-free DNA fragmentomes. Nature Communications, 2021.
- Cristiano S, Leal A, Phallen J, Fiksel J, Adleff V, Bruhm DC, Jensen SØ, Medina JE, Hruban C, White JR, Palsgrove DN, Niknafs N, Anagnostou V, Forde P, Naidoo J, Marrone K, Brahmer J, Woodward BD, Husain H, van Rooijen KL, Ørntoft MW, Madsen AH, van de Velde CJH, Verheij M, Cats A, Punt CJA, Vink GR, van Grieken NCT, Koopman M, Fijneman RJA, Johansen JS, Nielsen HJ, Meijer GA, Andersen CL, Scharpf RB, Velculescu VE. Genome-wide cell-free DNA fragmentation in patients with cancer. Nature, 2019.