Use my Search Websuite to scan PubMed, PMCentral, Journal Hosts and Journal Archives, FullText.
Kick-your-searchterm to multiple Engines kick-your-query now !>
A dictionary by aggregated review articles of nephrology, medicine and the life sciences
Your one-stop-run pathway from word to the immediate pdf of peer-reviewed on-topic knowledge.

suck abstract from ncbi


10.26444/aaem/206945

http://scihub22266oqcxt.onion/10.26444/aaem/206945
suck pdf from google scholar
40586499!ä!40586499

Warning: file_get_contents(https://eutils.ncbi.nlm.nih.gov/entrez/eutils/elink.fcgi?dbfrom=pubmed&id=40586499&cmd=llinks): Failed to open stream: HTTP request failed! HTTP/1.1 429 Too Many Requests in C:\Inetpub\vhosts\kidney.de\httpdocs\pget.php on line 215

suck abstract from ncbi


Deprecated: Implicit conversion from float 215.6 to int loses precision in C:\Inetpub\vhosts\kidney.de\httpdocs\pget.php on line 534

Deprecated: Implicit conversion from float 215.6 to int loses precision in C:\Inetpub\vhosts\kidney.de\httpdocs\pget.php on line 534

Deprecated: Implicit conversion from float 215.6 to int loses precision in C:\Inetpub\vhosts\kidney.de\httpdocs\pget.php on line 534

Deprecated: Implicit conversion from float 215.6 to int loses precision in C:\Inetpub\vhosts\kidney.de\httpdocs\pget.php on line 534

Deprecated: Implicit conversion from float 215.6 to int loses precision in C:\Inetpub\vhosts\kidney.de\httpdocs\pget.php on line 534

Deprecated: Implicit conversion from float 215.6 to int loses precision in C:\Inetpub\vhosts\kidney.de\httpdocs\pget.php on line 534

Deprecated: Implicit conversion from float 215.6 to int loses precision in C:\Inetpub\vhosts\kidney.de\httpdocs\pget.php on line 534

Deprecated: Implicit conversion from float 249.2 to int loses precision in C:\Inetpub\vhosts\kidney.de\httpdocs\pget.php on line 534

Deprecated: Implicit conversion from float 249.2 to int loses precision in C:\Inetpub\vhosts\kidney.de\httpdocs\pget.php on line 534

Deprecated: Implicit conversion from float 249.2 to int loses precision in C:\Inetpub\vhosts\kidney.de\httpdocs\pget.php on line 534

Deprecated: Implicit conversion from float 249.2 to int loses precision in C:\Inetpub\vhosts\kidney.de\httpdocs\pget.php on line 534

Deprecated: Implicit conversion from float 249.2 to int loses precision in C:\Inetpub\vhosts\kidney.de\httpdocs\pget.php on line 534

Warning: imagejpeg(C:\Inetpub\vhosts\kidney.de\httpdocs\phplern\40586499.jpg): Failed to open stream: No such file or directory in C:\Inetpub\vhosts\kidney.de\httpdocs\pget.php on line 117
pmid40586499      Ann+Agric+Environ+Med 2025 ; 32 (2): 222-229
Nephropedia Template TP

gab.com Text

Twit Text FOAVip

Twit Text #

English Wikipedia


  • Improvement in classification capabilities of surface water samples based on analysis of multidimensional data from gas sensor array #MMPMID40586499
  • Pilat-Rozek M; Lagod G
  • Ann Agric Environ Med 2025[Jun]; 32 (2): 222-229 PMID40586499show ga
  • INTRODUCTION AND OBJECTIVE: It has been proven that e-noses can successfully differentiate between drainage and river water samples. However, it was supposed that the classification accuracy in the previous article from the series could have been refined. The aim of the article was to improve the classification accuracy of surface water samples analyzed with a gas sensor array. MATERIAL AND METHODS: The multidimensional data on which the machine learning models were trained was derived from river water, drainage water and synthetic air samples measured using an array comprising 17 gas sensors. In this research, the unsupervised t-SNE and k-medians were used for dimensionality reduction, visualization on 2-dimensional plane, and clustering. Subsequently, supervised classificators XGBoost and AdaBoost.M1 were trained and compared with regard to the achieved quality of classification of objects into correct classes. RESULTS: The visualization using t-SNE and clustering with k-medians clearly distinguished the observations from the water sample and different drainage samples. The applied supervised machine learning methods achieved 88.8% and 89.2% correct classifications on the test set for the XGBoost and AdaBoost.M1 models, respectively. CONCLUSIONS: Despite the absence of statistical significance in differences of medians in most of the multiple comparisons between sample groups for all the classical indicators, the electronic nose allows differentiating and correctly classifying surface water samples with high accuracy.
  • |*Electronic Nose[MESH]
  • |*Environmental Monitoring/methods/instrumentation[MESH]
  • |*Gases/analysis[MESH]
  • |*Rivers/chemistry[MESH]


  • DeepDyve
  • Pubget Overpricing
  • suck abstract from ncbi

    Linkout box