Automated Computational Detection, Quantitation, and Mapping of Mitosis in Whole-Slide Images for Clinically Actionable Surgical Pathology Decision Support

dc.citation.issue1
dc.citation.volume10
dc.contributor.authorPuri M
dc.contributor.authorHoover SB
dc.contributor.authorHewitt SM
dc.contributor.authorWei B-R
dc.contributor.authorAdissu HA
dc.contributor.authorHalsey CHC
dc.contributor.authorBeck J
dc.contributor.authorBradley C
dc.contributor.authorCramer SD
dc.contributor.authorDurham AC
dc.contributor.authorEsplin DG
dc.contributor.authorFrank C
dc.contributor.authorLyle LT
dc.contributor.authorMcGill LD
dc.contributor.authorSánchez MD
dc.contributor.authorSchaffer PA
dc.contributor.authorTraslavina RP
dc.contributor.authorBuza E
dc.contributor.authorYang HH
dc.contributor.authorLee MP
dc.contributor.authorDwyer JE
dc.contributor.authorSimpson RM
dc.date.accessioned2026-02-17T01:19:13Z
dc.date.issued2022-04-14
dc.description.abstractBackground: Determining mitotic index by counting mitotic figures (MFs) microscopically from tumor areas with most abundant MF (hotspots [HS]) produces a prognostically useful tumor grading biomarker. However, interobserver concordance identifying MF and HS can be poorly reproducible. Immunolabeling MF, coupled with computer-automated counting by image analysis, can improve reproducibility. A computational system for obtaining MF values across digitized whole-slide images (WSIs) was sought that would minimize impact of artifacts, generate values clinically relatable to counting ten high-power microscopic fields of view typical in conventional microscopy, and that would reproducibly map HS topography. Materials and Methods: Relatively low-resolution WSI scans (0.50 µm/pixel) were imported in grid-tile format for feature-based MF segmentation, from naturally occurring canine melanomas providing a wide range of proliferative activity. MF feature extraction conformed to anti-phospho-histone H3-immunolabeled mitotic (M) phase cells. Computer vision image processing was established to subtract key artifacts, obtain MF counts, and employ rotationally invariant feature extraction to map MF topography. Results: The automated topometric HS (TMHS) algorithm identified mitotic HS and mapped select tissue tiles with greatest MF counts back onto WSI thumbnail images to plot HS topographically. Influence of dye, pigment, and extraneous structure artifacts was minimized. TMHS diagnostic decision support included image overlay graphics of HS topography, as well as a spreadsheet and plot of tile-based MF count values. TMHS performance was validated examining both mitotic HS counting and mapping functions. Significantly correlated TMHS MF mapping and metrics were demonstrated using repeat analysis with WSI in different orientation (R2 = 0.9916) and by agreement with a pathologist (R2 = 0.8605) as well as through assessment of counting function using an independently tuned object counting algorithm (OCA) (R2 = 0.9482). Limits of agreement analysis support method interchangeability. MF counts obtained led to accurate patient survival prediction in all (n = 30) except one case. By contrast, more variable performance was documented when several pathologists examined similar cases using microscopy (pair-wise correlations, rho range = 0.7597-0.9286). Conclusions: Automated TMHS MF segmentation and feature engineering performance were interchangeable with both observer and OCA in digital mode. Moreover, enhanced HS location accuracy and superior method reproducibility were achieved using the automated TMHS algorithm compared to the current practice employing clinical microscopy.
dc.description.confidentialfalse
dc.edition.editionJanuary–December 2019
dc.identifier.citationPuri M, Hoover SB, Hewitt SM, Wei BR, Adissu HA, Halsey CHC, Beck J, Bradley C, Cramer SD, Durham AC, Esplin DG, Frank C, Lyle LT, McGill LD, Sánchez MD, Schaffer PA, Traslavina RP, Buza E, Yang HH, Lee MP, Dwyer JE, Simpson RM. (2019). Automated computational detection, quantitation, and mapping of mitosis in whole-slide images for clinically actionable surgical pathology decision support. Journal of Pathology Informatics. 10. 1.
dc.identifier.doi10.4103/jpi.jpi_59_18
dc.identifier.eissn2153-3539
dc.identifier.elements-typejournal-article
dc.identifier.issn2229-5089
dc.identifier.number4
dc.identifier.piiS2153353922003674
dc.identifier.urihttps://mro.massey.ac.nz/handle/10179/74154
dc.languageEnglish
dc.publisherElsevier Inc on behalf of the Association for Pathology Informatics
dc.publisher.urihttps://www.sciencedirect.com/science/article/pii/S2153353922003674
dc.relation.isPartOfJournal of Pathology Informatics
dc.rightsCC BY-NC-SA 4.0
dc.rights(c) 2019 The Author/s
dc.rights.urihttps://creativecommons.org/licenses/by-nc-sa/4.0/deed.en
dc.subjectCancer grading
dc.subjectcomputer-assisted diagnosis/prognosis
dc.subjectfeature engineering
dc.subjectimage segmentation
dc.subjectmethod reproducibility
dc.subjectpathology imaging informatics
dc.subjectproliferation index
dc.titleAutomated Computational Detection, Quantitation, and Mapping of Mitosis in Whole-Slide Images for Clinically Actionable Surgical Pathology Decision Support
dc.typeJournal article
pubs.elements-id608689
pubs.organisational-groupOther

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