Synthetic dataset of PLGA and liposome nanocarrier formulations for brain-cancer-relevant drug delivery, release, blood-brain-barrier transport, and paired cell-viability proxies
收藏DataCite Commons2026-04-20 更新2026-05-04 收录
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https://data.mendeley.com/datasets/jvfb9mjzws
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资源简介:
This is a fully synthetic/simulated dataset package designed to support materials-informatics and comparative formulation analysis of PLGA nanoparticles and liposomes for brain-cancer-relevant drug delivery. The package contains 6,000 unique virtual formulations in a master table and three linked long-format tables describing time-resolved release profiles (360,000 rows), blood-brain-barrier transport proxies (54,000 rows), and paired tumor/non-tumor cell-assay proxies (432,000 rows), totaling approximately 846,000 assay-like rows. Variables include composition descriptors, preparation routes, physicochemical properties, targeting features, encapsulation efficiency, drug loading, stability, biodegradation proxy, serum stability proxy, integrated BBB transport score, cellular uptake score, biocompatibility score, tumor-directed cytotoxicity proxy, off-target toxicity proxy, and derived multi-criteria performance scores.
The dataset is fully synthetic/simulated — it does not contain patient data, animal data, clinical records, or published experimental rows. It was generated through a transparent 15-step workflow combining domain-informed hierarchical priors, latent heterogeneity, batch effects, replicate variation, bounded noise, and post-generation validation. The package is distributed with its full Python generator, JSON configuration, codebook, validation report, and three reproducible figures. It is intended for methodological reuse, surrogate modeling, benchmarking, multi-criteria optimization, machine-learning workflow development, comparative formulation analytics, and teaching of reproducible nanomedicine data workflows. It is NOT intended to support clinical, regulatory, or efficacy claims.
This dataset accompanies a manuscript submitted to Data in Brief (Elsevier) and extends the scientific themes synthesized in the related review article by Makalew & Abrori, OpenNano 21 (2025) 100225.
提供机构:
Mendeley Data
创建时间:
2026-04-20



