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Does FlowCAM have advantages over traditional methods like microscopic identification in terms of quality control? 


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The FlowCAM offers advantages over traditional methods like microscopic identification in terms of quality control. It allows for examination of more cells, resulting in greater counting precision and reducing the tediousness and time consumption associated with microscopy . Additionally, the FlowCAM automatically records information on size and fluorescence per cell, eliminating the need to examine cells outside the ranges of these measurements for target species . However, image recognition software is still required to identify the harmful algal bloom (HAB) species of interest, and images must be examined by a trained operator . In contrast, traditional microscopy allows for the detection and correction of patient motion, accurate detection of soft tissue attenuators, and anticipation of associated artifacts . It also provides rotating projection images, which are not obtained with the FlowCAM, allowing for the detection and correction of patient motion and the accurate detection of soft tissue attenuators .

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01 Jan 1984
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The paper does not provide information about FlowCAM or its advantages over traditional methods for quality control.
The paper does not mention FlowCAM or compare it to traditional methods like microscopic identification in terms of quality control.
The given text does not provide any information about FlowCAM or its advantages over traditional methods for quality control.
The text does not provide any information about FlowCAM or its advantages over traditional methods for quality control.
Yes, FlowCAM is less tedious and time-consuming than microscopy, allowing for examination of more cells for greater counting precision.

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