2020
DOI: 10.1038/s41598-020-73246-2
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Deep learning algorithms out-perform veterinary pathologists in detecting the mitotically most active tumor region

Abstract: Manual count of mitotic figures, which is determined in the tumor region with the highest mitotic activity, is a key parameter of most tumor grading schemes. It can be, however, strongly dependent on the area selection due to uneven mitotic figure distribution in the tumor section. We aimed to assess the question, how significantly the area selection could impact the mitotic count, which has a known high inter-rater disagreement. On a data set of 32 whole slide images of H&E-stained canine cutaneous mast c… Show more

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Cited by 62 publications
(80 citation statements)
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“…Imperfect interobserver and intraobserver reproducibility when obtaining the MC can result from (1) difficulty of differentiating MF from MLF (human error); (2) an inability to efficiently locate the region of highest mitotic density; and (3) impaired reproducibility of MF identification or classification while performing repetitive tasks. 7,11,13,20,22,27,28,34,35,40,45,51,57,65 With sufficient numbers of images, humans, and computer programs can be "trained" to differentiate MF, AMF, and MLF. Algorithms can assess the entire slide or several slides within a short period of time, are 100% reproducible, and (with good data sets and deep learning methods) they can be as accurate as pathologists.…”
Section: Reasons To Use Cpath For Mf Identificationmentioning
confidence: 99%
See 3 more Smart Citations
“…Imperfect interobserver and intraobserver reproducibility when obtaining the MC can result from (1) difficulty of differentiating MF from MLF (human error); (2) an inability to efficiently locate the region of highest mitotic density; and (3) impaired reproducibility of MF identification or classification while performing repetitive tasks. 7,11,13,20,22,27,28,34,35,40,45,51,57,65 With sufficient numbers of images, humans, and computer programs can be "trained" to differentiate MF, AMF, and MLF. Algorithms can assess the entire slide or several slides within a short period of time, are 100% reproducible, and (with good data sets and deep learning methods) they can be as accurate as pathologists.…”
Section: Reasons To Use Cpath For Mf Identificationmentioning
confidence: 99%
“…Detection and classification results of a dual-stage deep learning-based algorithm for mitotic figures in digital images of canine cutaneous mast cell tumors. 7 Detections (first stage) are labeled by boxes. Classification (second stage) into MF or MLF is indicated by color: Numbers below the boxes (model scores) as well as colors of the boxes indicate how likely a structure is interpreted to be MF (dark green, score ≥0.5, Figs.…”
Section: Morphologies Of Mf In Histology and Cytologymentioning
confidence: 99%
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“…The mitotic count has a known high inter-rater disagreement and is strongly dependent on the area selection due to uneven mitotic figure distribution. In our work [1], we assessed the question, how significantly the area selection could impact the mitotic count. On a data set of 32 cases of H&E-stained canine cutaneous mast cell tumor, fully annotated for mitotic figures, we asked eight veterinary pathologists to select a field of interest for the mitotic count, and retrieved the mitotic count for that area from the data set.…”
mentioning
confidence: 99%