Three-tiered score for Ki-67 and p16 ink4a improves accuracy and reproducibility of grading CIN lesions.

JOURNAL OF CLINICAL PATHOLOGY(2018)

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Abstract
Aims To investigate the accuracy and reproducibility of a scoring system for cervical intraepithelial neoplasia (CIN1-3) based on immunohistochemical (IHC) biomarkers Ki-67 and p16(ink4a). Methods 115 cervical tissue specimens were reviewed by three expert gynaecopathologists and graded according to three strategies: (1) CIN grade based on H&E staining only; (2) immunoscore based on the cumulative score of Ki-67 and p16(ink4a) only (0-6); and (3) CIN grade based on H&E supported by non-objectified IHC 2weeks after scoring 1 and 2. The majority consensus diagnosis of the CIN grade based on H&E supported by IHC was used as the Reference Standard. The proportion of test positives (accuracy) and the absolute agreements across pathologists (reproducibility) of the three grading strategies within each Reference Standard category were calculated. Results We found that immunoscoring with positivity definition 6 yielded the highest proportion of test positives for Reference Standard CIN3 (95.5%), in combination with the lowest proportion of test positives in samples with CIN1 (1.8%). The proportion of test positives for CIN3 was significantly lower for sole H&E staining (81.8%) or combined H&E and IHC grading (84.8%) with positivity definition CIN3. Immunoscore 6 also yielded high absolute agreements for CIN3 and CIN1, but the absolute agreement was low for CIN2. Conclusions The higher accuracy and reproducibility of the immunoscore opens the possibility of a more standardised and reproducible definition of CIN grade than conventional pathology practice, allowing a more accurate comparison of CIN-based management strategies and evaluation of new biomarkers to improve the understanding of progression of precancer from human papillomavirus infection to cancer.
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Key words
cervical cancer,immunohistochemistry,HPV,Ki 67,diagnosis
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