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10. Detection of microbial disturbances in a drinking water microbial community through continuous acquisition and advanced analysis of flow cytometry data. Props R; Rubbens P; Besmer M; Buysschaert B; Sigrist J; Weilenmann H; Waegeman W; Boon N; Hammes F Water Res; 2018 Nov; 145():73-82. PubMed ID: 30121434 [TBL] [Abstract][Full Text] [Related]
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