PTOLEMI: Personalized Cancer Treatment through Machine Learning-Enabled Image Analysis of Microfluidic Assays

Author:

Moerdler Bernard1,Krasner Matan1ORCID,Orenbuch Elazar1ORCID,Grad Avi1,Friedman Benjamin1,Graber Eliezer1ORCID,Barbiro-Michaely Efrat1,Gerber Doron1

Affiliation:

1. Life Sciences Faculty and Nanotechnology Institute, Bar-Ilan University, Ramat Gan 5290002, Israel

Abstract

Contemporary personalized cancer diagnostic approaches encounter multiple challenges. The presence of cellular and molecular heterogeneity in patient samples introduces complexities to analysis protocols. Conventional analyses are manual, reliant on expert personnel, time-intensive, and financially burdensome. The copious data amassed for subsequent analysis strains the system, obstructing real-time diagnostics at the “point of care” and impeding prompt intervention. This study introduces PTOLEMI: Python-based Tensor Oncological Locator Examining Microfluidic Instruments. PTOLEMI stands out as a specialized system designed for high-throughput image analysis, particularly in the realm of microfluidic assays. Utilizing a blend of machine learning algorithms, PTOLEMI can process large datasets rapidly and with high accuracy, making it feasible for point-of-care diagnostics. Furthermore, its advanced analytics capabilities facilitate a more granular understanding of cellular dynamics, thereby allowing for more targeted and effective treatment options. Leveraging cutting-edge AI algorithms, PTOLEMI rapidly and accurately discriminates between cell viability and distinct cell types within biopsy samples. The diagnostic process becomes automated, swift, precise, and resource-efficient, rendering it well-suited for point-of-care requisites. By employing PTOLEMI alongside a microfluidic cell culture chip, physicians can attain personalized diagnostic and therapeutic insights. This paper elucidates the evolution of PTOLEMI and showcases its prowess in analyzing cancer patient samples within a microfluidic apparatus. While the integration of machine learning tools into biomedical domains is undoubtedly in progress, this study’s innovation lies in the fusion of PTOLEMI with a microfluidic platform—an integrated, rapid, and independent framework for personalized drug screening-based clinical decision-making.

Funder

Imageomics FET European

Publisher

MDPI AG

Subject

Clinical Biochemistry

Reference28 articles.

1. Global Cancer Observatory (2023, June 29). (3 February 2022). Cancer. World Health Organization (WHO). Available online: https://www.who.int/news-room/fact-sheets/detail/cancer.

2. Mhaske, A., Dighe, S., Ghosalkar, S., Tanna, V., Ravikumar, P., and Sawarkar, S.P. (2023, June 15). (1 January 1970). Limitations of Current Cancer Theranostics. SpringerLink. Available online: https://link.springer.com/chapter/10.1007/978-3-030-76263-6_12.

3. (2023, June 29). Personalized Cancer Treatment. (n.d.). CancerQuest. Available online: https://cancerquest.org/patients/treatments/personalized-cancer-treatment.

4. Hoeben, A., Joosten, E.A.J., and van den Beuken-van Everdingen, M.H.J. (2021). Personalized Medicine: Recent Progress in Cancer Therapy. Cancers, 13.

5. Tumor Heterogeneity and Personalized Medicine;Longo;N. Engl. J. Med.,2012

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