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DOI: 10.1101/2021.02.11.429432
¤ OpenAccess: Green
This work has “Green” OA status. This means it may cost money to access on the publisher landing page, but there is a free copy in an OA repository.

Development of an exosomal gene signature to detect residual disease in dogs with osteosarcoma using a novel xenograft platform and machine learning

Kelly M. Makielski,Alicia J. Donnelly,Ali Khammanivong,Milcah C. Scott,Andrea R Ortiz,Dana C. Galván,Hirotaka Tomiyasu,Clarissa Amaya,Kristi Ward,Alexa Montoya,John Garbe,Lauren J. Mills,Gary Cutter,Joelle M. Fenger,William C. Kisseberth,Timothy O’Brien,Logan G. Spector,Brad Allen Bryan,Subbaya Subramanian,Jaime F. Modiano

Osteosarcoma
Minimal residual disease
Medicine
2021
Abstract Osteosarcoma has a guarded prognosis. A major hurdle in developing more effective osteosarcoma therapies is the lack of disease-specific biomarkers to predict risk, prognosis, or therapeutic response. Exosomes are secreted extracellular microvesicles emerging as powerful diagnostic tools. However, their clinical application is precluded by challenges in identifying disease-associated cargo from the vastly larger background of normal exosome cargo. We developed a method using canine osteosarcoma in mouse xenografts to distinguish tumor-derived from host-response exosomal mRNAs. The model allows for the identification of canine osteosarcoma-specific gene signatures by RNA sequencing and a species-differentiating bioinformatics pipeline. An osteosarcoma-associated signature consisting of five gene transcripts ( SKA2, NEU1, PAF1, PSMG2, and NOB1 ) was validated in dogs with spontaneous osteosarcoma by qRT-PCR, while a machine learning model assigned dogs into healthy or disease groups. Serum/plasma exosomes were isolated from 53 dogs in distinct clinical groups (“healthy”, “osteosarcoma”, “other bone tumor”, or “non-neoplastic disease”). Pre-treatment samples from osteosarcoma cases were used as the training set and a validation set from post-treatment samples was used for testing, classifying as “osteosarcoma–detected” or “osteosarcoma–NOT detected”. Dogs in a validation set whose post-treatment samples were classified as “osteosarcoma–NOT detected” had longer remissions, up to 15 months after treatment. In conclusion, we identified a gene signature predictive of molecular remissions with potential applications in the early detection and minimal residual disease settings. These results provide proof-of-concept for our discovery platform and its utilization in future studies to inform cancer risk, diagnosis, prognosis, and therapeutic response. Abstract Figure
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    Development of an exosomal gene signature to detect residual disease in dogs with osteosarcoma using a novel xenograft platform and machine learning” is a paper by Kelly M. Makielski Alicia J. Donnelly Ali Khammanivong Milcah C. Scott Andrea R Ortiz Dana C. Galván Hirotaka Tomiyasu Clarissa Amaya Kristi Ward Alexa Montoya John Garbe Lauren J. Mills Gary Cutter Joelle M. Fenger William C. Kisseberth Timothy O’Brien Logan G. Spector Brad Allen Bryan Subbaya Subramanian Jaime F. Modiano published in 2021. It has an Open Access status of “green”. You can read and download a PDF Full Text of this paper here.