Development of Personalized Therapeutics Using Neo7logix Precision Profiling in Lung Cancer
Development of Personalized Therapeutics Using Neo7logix Precision Profiling in Lung Cancer
Anton Yuryev A, John Catanzaro B, Md Shamsuddin Sultan Khan C
Journal of Precision Biosciences 1(1) 016-025 https://doi.org/10.25163/biosciences.112090DB112921119
Submitted: 29 October 2019 Revised: 29 October 2019 Published: 02 November 2019
Abstract
Neo7logix is a biopathway HLA affinity mapping and selection prediction ranking device that combines biological intelligence programming (molecular mapping), knowledge-based systems applications, artificial intelligence and machine learning. The platform integration utilizes all NGS data including WES, WGS, RNAseq and Proteomics. Neo7logix, LLC proprietary architecture is applicable for cancer, autoimmune and neurodegenerative diseases. A precision mapping, ranking and selection profile is then generated to derive a precision-based personalized Immuno-molecular Augmentation therapeutic application that activates the immune system defenses and regulatory mechanisms to intelligently fight the cancer and / or disease process. Neo7logix, LLC can also predict “best fit” drug applications in many disease types. In this paper the focus profiling, mapping, affinity ranking and final selection is in a patient prototype sample lung cancer diagnosis.
Key words: WES, Proteomics, PBIMA, CNS Inflammation
Autoimmune Disease
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