Merck
CN
  • Automated discovery of novel drug formulations using predictive iterated high throughput experimentation.

Automated discovery of novel drug formulations using predictive iterated high throughput experimentation.

PloS one (2010-01-06)
Filippo Caschera, Gianluca Gazzola, Mark A Bedau, Carolina Bosch Moreno, Andrew Buchanan, James Cawse, Norman Packard, Martin M Hanczyc
摘要

We consider the problem of optimizing a liposomal drug formulation: a complex chemical system with many components (e.g., elements of a lipid library) that interact nonlinearly and synergistically in ways that cannot be predicted from first principles. The optimization criterion in our experiments was the percent encapsulation of a target drug, Amphotericin B, detected experimentally via spectrophotometric assay. Optimization of such a complex system requires strategies that efficiently discover solutions in extremely large volumes of potential experimental space. We have designed and implemented a new strategy of evolutionary design of experiments (Evo-DoE), that efficiently explores high-dimensional spaces by coupling the power of computer and statistical modeling with experimentally measured responses in an iterative loop. We demonstrate how iterative looping of modeling and experimentation can quickly produce new discoveries with significantly better experimental response, and how such looping can discover the chemical landscape underlying complex chemical systems.

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Sigma-Aldrich
1,2-二硬脂酰-sn-甘油基-3-磷酸- L -丝氨酸 钠盐, ≥75% (TLC)