Precise cancer detection via the combination of functionalized SERS surfaces and convolutional neural network with independent inputs; Sensors and Actuators B: Chemical; Vol. 308

Xehetasun bibliografikoak
Parent link:Sensors and Actuators B: Chemical
Vol. 308.— 2020.— [127660, 9 p.]
Egile korporatiboa: Национальный исследовательский Томский политехнический университет Исследовательская школа химических и биомедицинских технологий, Национальный исследовательский Томский политехнический университет Исследовательская школа физики высокоэнергетических процессов
Beste egile batzuk: Erzina M. R. Mariya Rashidovna, Trelin A. Andrey, Guselnikova O. A. Olga Andreevna, Dvorankova B. Barbara, Strnadova K., Perminova A. Anastasiya, Ulbrikh P., Maresh D., Zherabek V., Elashnikov R. Roman, Svorcik V. Vaclav, Lyutakov O. Oleksy
Gaia:Title screen
Combining the advanced approaches of surface functionalization and chemistry, plasmonics, surface enhanced Raman spectroscopy (SERS), and machine learning, we propose the advanced route for express and precise recognition of normal and cancer cells. Our interdisciplinary approach uses plasmonic coupling between the specific nanoparticles and underlying periodical plasmonic surface and achieves high SERS enhancement factor. The surface of gold multibranched nanoparticles (AuMs) was functionalized with different chemical groups to achieve partially selective entrapping of biomolecules from cells cultivation media and generate information-rich inputs for machine learning methods and SERS-based cells recognition. Evaluation of convolutional neural networks (CNN) training results, performed with ad hoc feature selection method, suggests that the grafted functional groups provide specificity to proteins, nucleic acids and lipids, responsible for cancer line identification. The dataset of SERS control spectra of normal and cancer cell’s metabolites were classified by the trained CNN and perfectly distinguished with 100 % prediction accuracy.
Режим доступа: по договору с организацией-держателем ресурса
Hizkuntza:ingelesa
Argitaratua: 2020
Gaiak:
Sarrera elektronikoa:https://doi.org/10.1016/j.snb.2020.127660
Formatua: MixedMaterials Baliabide elektronikoa Liburu kapitulua
KOHA link:https://koha.lib.tpu.ru/cgi-bin/koha/opac-detail.pl?biblionumber=663798

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200 1 |a Precise cancer detection via the combination of functionalized SERS surfaces and convolutional neural network with independent inputs  |f M. R. Erzina, A. Trelin, O. A. Guselnikova [et al.] 
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330 |a Combining the advanced approaches of surface functionalization and chemistry, plasmonics, surface enhanced Raman spectroscopy (SERS), and machine learning, we propose the advanced route for express and precise recognition of normal and cancer cells. Our interdisciplinary approach uses plasmonic coupling between the specific nanoparticles and underlying periodical plasmonic surface and achieves high SERS enhancement factor. The surface of gold multibranched nanoparticles (AuMs) was functionalized with different chemical groups to achieve partially selective entrapping of biomolecules from cells cultivation media and generate information-rich inputs for machine learning methods and SERS-based cells recognition. Evaluation of convolutional neural networks (CNN) training results, performed with ad hoc feature selection method, suggests that the grafted functional groups provide specificity to proteins, nucleic acids and lipids, responsible for cancer line identification. The dataset of SERS control spectra of normal and cancer cell’s metabolites were classified by the trained CNN and perfectly distinguished with 100 % prediction accuracy. 
333 |a Режим доступа: по договору с организацией-держателем ресурса 
461 |t Sensors and Actuators B: Chemical 
463 |t Vol. 308  |v [127660, 9 p.]  |d 2020 
610 1 |a труды учёных ТПУ 
610 1 |a электронный ресурс 
610 1 |a cancer detection 
610 1 |a SERS 
610 1 |a surface functionalization 
610 1 |a convolutional neural network 
701 1 |a Erzina  |b M. R.  |g Mariya Rashidovna 
701 1 |a Trelin  |b A.  |g Andrey 
701 1 |a Guselnikova  |b O. A.  |c chemist  |c Researcher at Tomsk Polytechnic University, Candidate of Chemical Sciences  |f 1992-  |g Olga Andreevna  |3 (RuTPU)RU\TPU\pers\34478  |9 17861 
701 1 |a Dvorankova  |b B.  |g Barbara 
701 1 |a Strnadova  |b K. 
701 1 |a Perminova  |b A.  |g Anastasiya 
701 1 |a Ulbrikh  |b P. 
701 1 |a Maresh  |b D. 
701 1 |a Zherabek  |b V. 
701 1 |a Elashnikov  |b R.  |g Roman 
701 1 |a Svorcik  |b V.  |g Vaclav 
701 1 |a Lyutakov  |b O.  |c chemist-technologist  |c Associate Scientist of Tomsk Polytechnic University  |f 1982-  |g Oleksy  |3 (RuTPU)RU\TPU\pers\36875 
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712 0 2 |a Национальный исследовательский Томский политехнический университет  |b Исследовательская школа физики высокоэнергетических процессов  |c (2017- )  |3 (RuTPU)RU\TPU\col\23551 
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