Literature DB >> 33373205

Machine-Learning-Based Approach to Decode the Influence of Nanomaterial Properties on Their Interaction with Cells.

Ajay Vikram Singh1, Romi-Singh Maharjan1, Anurag Kanase2, Katherina Siewert1, Daniel Rosenkranz1, Rishabh Singh3, Peter Laux1, Andreas Luch1.   

Abstract

In an in vitro nanotoxicity system, cell-nanoparticle (NP) interaction leads to the surface adsorption, uptake, and changes into nuclei/cell phenotype and chemistry, as an indicator of oxidative stress, genotoxicity, and carcinogenicity. Different types of nanomaterials and their chemical composition or "corona" have been widely studied in context with nanotoxicology. However, rare reports are available, which delineate the details of the cell shape index (CSI) and nuclear area factors (NAFs) as a descriptor of the type of nanomaterials. In this paper, we propose a machine-learning-based graph modeling and correlation-establishing approach using tight junction protein ZO-1-mediated alteration in the cell/nuclei phenotype to quantify and propose it as indices of cell-NP interactions. We believe that the phenotypic variation (CSI and NAF) in the epithelial cell is governed by the physicochemical descriptors (e.g., shape, size, zeta potential, concentration, diffusion coefficients, polydispersity, and so on) of the different classes of nanomaterials, which critically determines the intracellular uptake or cell membrane interactions when exposed to the epithelial cells at sub-lethal concentrations. The intrinsic and extrinsic physicochemical properties of the representative nanomaterials (NMs) were measured using optical (dynamic light scattering, NP tracking analysis) methods to create a set of nanodescriptors contributing to cell-NM interactions via phenotype adjustments. We used correlation function as a machine-learning algorithm to successfully predict cell and nuclei shapes and polarity functions as phenotypic markers for five different classes of nanomaterials studied herein this report. The CSI and NAF as nanodescriptors can be used as intuitive cell phenotypic parameters to define the safety of nanomaterials extensively used in consumer products and nanomedicine.

Entities:  

Keywords:  artificial intelligence (AI); cell shape index (CSI); chromatin condensation; gold nanorods (GNRs); machine learning; nanodescriptors; nanomaterials; nanotoxicology; traction forces

Mesh:

Substances:

Year:  2020        PMID: 33373205     DOI: 10.1021/acsami.0c18470

Source DB:  PubMed          Journal:  ACS Appl Mater Interfaces        ISSN: 1944-8244            Impact factor:   9.229


  22 in total

1.  Interfacial Water in the SARS Spike Protein: Investigating the Interaction with Human ACE2 Receptor and In Vitro Uptake in A549 Cells.

Authors:  Ajay Vikram Singh; Abhijit Kayal; Ashish Malik; Romi Singh Maharjan; Paul Dietrich; Andreas Thissen; Katherina Siewert; Caterina Curato; Kajal Pande; Dwarakanath Prahlad; Naveen Kulkarni; Peter Laux; Andreas Luch
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Review 2.  Merging data curation and machine learning to improve nanomedicines.

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Review 3.  A Critical Review of the Use of Surfactant-Coated Nanoparticles in Nanomedicine and Food Nanotechnology.

Authors:  Taiki Miyazawa; Mayuko Itaya; Gregor C Burdeos; Kiyotaka Nakagawa; Teruo Miyazawa
Journal:  Int J Nanomedicine       Date:  2021-06-09

4.  Indocyanine Green-Based Theranostic Nanoplatform for NIR Fluorescence Image-Guided Chemo/Photothermal Therapy of Cervical Cancer.

Authors:  Rong Ma; Nuernisha Alifu; Zhong Du; Shuang Chen; Youqiang Heng; Jing Wang; Lijun Zhu; Cailing Ma; Xueliang Zhang
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5.  PEGylated Graphene Oxide Carried OH-CATH30 to Accelerate the Healing of Infected Skin Wounds.

Authors:  Di Mei; Xiaolong Guo; Yirong Wang; Xiaofei Huang; Li Guo; Pengfei Zou; Delong Ge; Xinxin Wang; Wenhui Lee; Tongyi Sun; Zhiqin Gao; Yuanyuan Gao
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Review 6.  Nanomedicine-Based Therapeutics to Combat Acute Lung Injury.

Authors:  Youbin Cui; Wanguo Liu; Shuai Bian; Hongfei Cai; Chunsheng Xiao
Journal:  Int J Nanomedicine       Date:  2021-03-18

7.  Cytotoxic Potential, Metabolic Profiling, and Liposomes of Coscinoderma sp. Crude Extract Supported by in silico Analysis.

Authors:  Arafa Musa; Abeer H Elmaidomy; Ahmed M Sayed; Sami I Alzarea; Mohammad M Al-Sanea; Ehab M Mostafa; Omina Magdy Hendawy; Mohamed A Abdelgawad; Khayrya A Youssif; Hesham Refaat; Eman Alaaeldin; Usama Ramadan Abdelmohsen
Journal:  Int J Nanomedicine       Date:  2021-06-04

8.  Hydroxyapatite/NELL-1 Nanoparticles Electrospun Fibers for Osteoinduction in Bone Tissue Engineering Application.

Authors:  Hualei Song; Yuntao Zhang; Zihan Zhang; Shijiang Xiong; Xiangrui Ma; Yourui Li
Journal:  Int J Nanomedicine       Date:  2021-06-25

9.  Performance of Regression Models as a Function of Experiment Noise.

Authors:  Gang Li; Jan Zrimec; Boyang Ji; Jun Geng; Johan Larsbrink; Aleksej Zelezniak; Jens Nielsen; Martin Km Engqvist
Journal:  Bioinform Biol Insights       Date:  2021-06-27

Review 10.  Recent Advances in Immunosafety and Nanoinformatics of Two-Dimensional Materials Applied to Nano-imaging.

Authors:  Gabriela H Da Silva; Lidiane S Franqui; Romana Petry; Marcella T Maia; Leandro C Fonseca; Adalberto Fazzio; Oswaldo L Alves; Diego Stéfani T Martinez
Journal:  Front Immunol       Date:  2021-06-03       Impact factor: 7.561

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