SCHWARZEROVÁ, Jana, Adam BAJGER, I. PIERDOU, Lubomír POPELÍNSKÝ, Karel SEDLÁŘ a W. WECKWERTH. An Innovative Perspective on Metabolomics Data Analysis in Biomedical Research Using Concept Drift Detection. Online. In Yufei Huang and Lukasz A. Kurgan and Feng Luo and Xiaohua Hu and Yidong Chen and Edward R. Dougherty and Andrzej Kloczkowski and Yaohang Li. Proceedings of BIBM 2021. Houston, TX, USA: IEEE, 2021, s. 3075-3082. ISBN 978-1-6654-0126-5. Dostupné z: https://dx.doi.org/10.1109/BIBM52615.2021.9669418.
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Základní údaje
Originální název An Innovative Perspective on Metabolomics Data Analysis in Biomedical Research Using Concept Drift Detection
Název česky An Innovative Perspective on Metabolomics Data Analysis in Biomedical Research Using Concept Drift Detection
Autoři SCHWARZEROVÁ, Jana (203 Česká republika), Adam BAJGER (203 Česká republika, domácí), I. PIERDOU, Lubomír POPELÍNSKÝ (203 Česká republika, domácí), Karel SEDLÁŘ (203 Česká republika) a W. WECKWERTH.
Vydání Houston, TX, USA, Proceedings of BIBM 2021, od s. 3075-3082, 8 s. 2021.
Nakladatel IEEE
Další údaje
Originální jazyk angličtina
Typ výsledku Stať ve sborníku
Obor 10602 Biology , Evolutionary biology
Stát vydavatele Česká republika
Utajení není předmětem státního či obchodního tajemství
Forma vydání elektronická verze "online"
Kód RIV RIV/00216224:14330/21:00126185
Organizační jednotka Fakulta informatiky
ISBN 978-1-6654-0126-5
Doi http://dx.doi.org/10.1109/BIBM52615.2021.9669418
Klíčová slova česky Machine Learning; Concept drift; Metabolomics Analysis; Biomedical engineering; Computational biomedical analysis; Metabolomic prediction
Klíčová slova anglicky Machine Learning; Concept drift; Metabolomics Analysis; Biomedical engineering; Computational biomedical analysis; Metabolomic prediction
Příznaky Mezinárodní význam, Recenzováno
Změnil Změnil: RNDr. Pavel Šmerk, Ph.D., učo 3880. Změněno: 28. 3. 2023 11:24.
Anotace
The most challenging applications of data analysis prediction are mostly related to scenarios, where the source data is being provided in a time course. As the distribution of the underlying reality shifts over a time, a classification model trained on the previously relevant data starts to yield incorrect predictions about the data that are relevant right now. This phenomenon in machine learning is called concept drift. Within biomedical data, one of the molecular networks that is most significantly changing over a time, is the metabolome. Using metabolomics analysis to biomedical applications, makes an ideal tool for preventive healthcare, pharmaceutical industry, and even ecology engineering. This study provides an innovated perspective on the analysis of metabolomics datasets using the concept of drift detection. The evaluation is based on two main goals. The first goal is connected to the concept drift detection in available metabolomics datasets and the second goal is to provide the assessment of commonly used tools, resulting in the best detection approach for a general metabolomics dataset.
Anotace česky
The most challenging applications of data analysis prediction are mostly related to scenarios, where the source data is being provided in a time course. As the distribution of the underlying reality shifts over a time, a classification model trained on the previously relevant data starts to yield incorrect predictions about the data that are relevant right now. This phenomenon in machine learning is called concept drift. Within biomedical data, one of the molecular networks that is most significantly changing over a time, is the metabolome. Using metabolomics analysis to biomedical applications, makes an ideal tool for preventive healthcare, pharmaceutical industry, and even ecology engineering. This study provides an innovated perspective on the analysis of metabolomics datasets using the concept of drift detection. The evaluation is based on two main goals. The first goal is connected to the concept drift detection in available metabolomics datasets and the second goal is to provide the assessment of commonly used tools, resulting in the best detection approach for a general metabolomics dataset.
VytisknoutZobrazeno: 9. 5. 2024 18:09