Modification of the nuclear pleomorphism score in the Modified Bloom-Richardson grading for invasive breast cancer
Azam Hilmi Mohd Zain, Seoparjoo Azmel Mohd Isa, Nur Asyilla Che Jalil, Suhaily Mohd Hairon, Syed Sana Abrar

TL;DR
This study modifies the breast cancer grading system by incorporating nuclear size measurements to improve objectivity and accuracy in prognosis.
Contribution
The study introduces a modified nuclear pleomorphism score using largest nuclear size and nuclear size difference.
Findings
Significant differences in nuclear size measurements were found across nuclear grades (p < 0.05).
The modified grading system showed fair to moderate agreement with pathologist assessments (Kappa = 0.367).
Further validation with larger datasets and automated analysis is needed for clinical application.
Abstract
To improve prognostic assessments in breast cancer by evaluating the efficacy of the modified Nottingham grading system, specifically focusing on nuclear pleomorphism through measurements of largest nuclear size (LNS) and nuclear size difference (NSD). This cross-sectional study involved 140 invasive breast cancer cases at Hospital Universiti Sains Malaysia. The study consisted of two phases: Phase 1, which developed nuclear scoring criteria using histopathological images from 2013–2017, and Phase 2, which validated these criteria on cases from 2018–2019. Two sets of samples were included for the study, with 120 cases analyzed in Phase 1 and 53 cases in Phase 2. Descriptive statistics and normality tests assessed differences in LNS and NSD across original nuclear grades. Significant differences were found in LNS and NSD across original nuclear grades (p < 0.05), with fair to moderate…
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Taxonomy
TopicsAI in cancer detection · Breast Cancer Treatment Studies · Radiomics and Machine Learning in Medical Imaging
