Artificial Intelligence and Machine Learning in Computational Nanotoxicology: Unlocking and Empowering Nanomedicine

被引:173
|
作者
Singh, Ajay Vikram [1 ]
Ansari, Mohammad Hasan Dad [2 ,3 ]
Rosenkranz, Daniel [1 ]
Maharjan, Romi Singh [1 ]
Kriegel, Fabian L. [1 ]
Gandhi, Kaustubh [4 ]
Kanase, Anurag [5 ]
Singh, Rishabh [6 ]
Laux, Peter [1 ]
Luch, Andreas [1 ]
机构
[1] German Fed Inst Risk Assessment BfR, Dept Chem & Prod Safety, Max Dohrn Str 8-10, D-10589 Berlin, Germany
[2] Scuola Super Sant Anna, BioRobot Inst, Via Rinaldo Piaggio 34, I-56025 Pontedera, Italy
[3] Scuola Super Sant Anna, Dept Excellence Robot & AI, Via Rinaldo Piaggio 34, I-56025 Pontedera, Italy
[4] Bosch Sensortec GmbH, Gerhard Kindler Str 9, D-72770 Reutlingen, Germany
[5] Northeastern Univ, Dept Bioengn, Boston, MA 02215 USA
[6] Rajarshi Shahu Coll Engn, Pune 411033, Maharashtra, India
关键词
AI; machine learning; nanomedicines; nanotoxicology; physiologically based pharmacokinetic modeling; METAL-OXIDE NANOPARTICLES; PREDICTING CELL VIABILITY; SCALE METABOLIC NETWORKS; PHARMACOKINETIC MODEL; PARTICLE DEPOSITION; NANO-QSAR; RISK-ASSESSMENT; CYTOTOXICITY; TOXICITY; SUPPORT;
D O I
10.1002/adhm.201901862
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Advances in nanomedicine, coupled with novel methods of creating advanced materials at the nanoscale, have opened new perspectives for the development of healthcare and medical products. Special attention must be paid toward safe design approaches for nanomaterial-based products. Recently, artificial intelligence (AI) and machine learning (ML) gifted the computational tool for enhancing and improving the simulation and modeling process for nanotoxicology and nanotherapeutics. In particular, the correlation of in vitro generated pharmacokinetics and pharmacodynamics to in vivo application scenarios is an important step toward the development of safe nanomedicinal products. This review portrays how in vitro and in vivo datasets are used in in silico models to unlock and empower nanomedicine. Physiologically based pharmacokinetic (PBPK) modeling and absorption, distribution, metabolism, and excretion (ADME)-based in silico methods along with dosimetry models as a focus area for nanomedicine are mainly described. The computational OMICS, colloidal particle determination, and algorithms to establish dosimetry for inhalation toxicology, and quantitative structure-activity relationships at nanoscale (nano-QSAR) are revisited. The challenges and opportunities facing the blind spots in nanotoxicology in this computationally dominated era are highlighted as the future to accelerate nanomedicine clinical translation.
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页数:19
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