Abstract
The Ki-67 index is an established prognostic factor in gastrointestinal neuroendocrine tumors (GI-NETs) and defines tumor grade. It is currently estimated by microscopically examining tumor tissue single-immunostained (SS) for Ki-67 and counting the number of Ki-67-positive and Ki-67-negative tumor cells within a subjectively picked hot-spot. Intraobserver variability in this procedure as well as difficulty in distinguishing tumor from non-tumor cells can lead to inaccurate Ki-67 indices and possibly incorrect tumor grades. We introduce two computational tools that utilize Ki-67 and synaptophysin double-immunostained (DS) slides to improve the accuracy of Ki-67 index quantitation in GI-NETs: (1) Synaptophysin-KI-Estimator (SKIE), a pipeline automating Ki-67 index quantitation via whole-slide image (WSI) analysis and (2) deep-SKIE, a deep learner-based approach where a Ki-67 index heatmap is generated throughout the tumor. Ki-67 indices for 50 GI-NETs were quantitated using SKIE and compared with DS slide assessments by three pathologists using a microscope and a fourth pathologist via manually ticking off each cell, the latter of which was deemed the gold standard (GS). Compared to the GS, SKIE achieved a grading accuracy of 90% and substantial agreement (linear-weighted Cohen’s kappa 0.62). Using DS WSIs, deep-SKIE displayed a training, validation, and testing accuracy of 98.4%, 90.9%, and 91.0%, respectively, significantly higher than using SS WSIs. Since DS slides are not standard clinical practice, we also integrated a cycle generative adversarial network into our pipeline to transform SS into DS WSIs. The proposed methods can improve accuracy and potentially save a significant amount of time if implemented into clinical practice.
Highlights
The Ki-67 index is an established prognostic factor in gastrointestinal neuroendocrine tumors (GI-NETs) and defines tumor grade
We focused on grade 1 (G1) and grade 2 (G2) cases of GI-NETs given that grading these tumors clinically are the most challenging
The three pathologists and the gold standard (GS) unanimously agreed upon tumor grades for 38 of the 50 cases (76%); 34 out of 38 (89.5%) of these cases were accurately graded by SKIE
Summary
The Ki-67 index is an established prognostic factor in gastrointestinal neuroendocrine tumors (GI-NETs) and defines tumor grade It is currently estimated by microscopically examining tumor tissue single-immunostained (SS) for Ki-67 and counting the number of Ki-67-positive and Ki-67negative tumor cells within a subjectively picked hot-spot. An automated method of quantifying the Ki-67 index, especially one that is capable of accurately differentiating G1 from G2 GI-NETs, that is rapid, reliable, and robust would greatly improve GI-NET grading as well as provide increased efficiency to workflow Another major limitation in the assessment of the Ki-67 index is the accidental inclusion of proliferating nontumor cells within the tumor sample[10]. All of the above-mentioned methods either do not distinguish between neoplastic and nonneoplastic cells, require manual selection of hot-spots (which is subjective and error prone), or lack scalability of the algorithms (which reduces their reproducibility and robustness)
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