1997
DOI: 10.1002/(sici)1097-0320(19970301)27:3<233::aid-cyto4>3.0.co;2-f
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Theoretical basis for sampling statistics useful for detecting and isolating rare cells using flow cytometry and cell sorting

Abstract: This paper describes new approaches to calculating the number of cells that need to be processed using flow cytometry (FCM) techniques and the subsequent time required in order to isolate a specific number of cells having selected characteristics. The methods proposed use probabilistic assumptions about the contents of the sample to be sorted, logarithmic/exponential transformations to avert the computer “underflow” and “overflow” limitations of brute force calculations for the parameters of the binomial distr… Show more

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Cited by 42 publications
(28 citation statements)
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“…We gated our collection on 10,000 lineage-negative/dim events, increasing the total number of events collected to an average of approximately 150,000 events, instead of the manufacturer's recommended 50,000. This assured statistical significance at the 100-cell/specimen level because counting 150,000 events would give accuracy to 1 cell per 1500 at the 95% confidence level, 22 maintaining consistency between specimens.…”
Section: Methodsmentioning
confidence: 99%
“…We gated our collection on 10,000 lineage-negative/dim events, increasing the total number of events collected to an average of approximately 150,000 events, instead of the manufacturer's recommended 50,000. This assured statistical significance at the 100-cell/specimen level because counting 150,000 events would give accuracy to 1 cell per 1500 at the 95% confidence level, 22 maintaining consistency between specimens.…”
Section: Methodsmentioning
confidence: 99%
“…While statistically insignificant and hence often ignored, rare events among a large heterogeneous population of cells in blood such as hematopoietic stem cells (39), antigen-specific Tcells (40), and circulating tumor cells (41,42) (Table S4) are important in biomedical research as well as medical diagnostics and therapeutics (43). Such rare cells can be identified by a combination of morphological (i.e., size, circularity, and clustering) and biochemical (i.e., surface antigens) markers.…”
Section: Screening Of Budding Yeast With the High-throughput Imaging mentioning
confidence: 99%
“…In model systems, rare event detection is often referred to as the ability to detect a single cell of a specific composition in a background of a certain number of other cells (1)(2)(3). However, in clinical applications utilizing rare event detection, the actual issues are the ability to detect the cells of interest in a limited volume and the ability to discern these cells from other cells, particularly from cell debris and other garbage (4,5).…”
mentioning
confidence: 99%