作者
Evan DH Gates, Jonathan S Lin, Jeffrey S Weinberg, Jackson Hamilton, Sujit S Prabhu, John D Hazle, Gregory N Fuller, Veera Baladandayuthapani, David Fuentes, Dawid Schellingerhout
发表日期
2019/3/18
期刊
Neuro-oncology
卷号
21
期号
4
页码范围
527-536
出版商
Oxford University Press
简介
Background
Undersampling of gliomas at first biopsy is a major clinical problem, as accurate grading determines all subsequent treatment. We submit a technological solution to reduce the problem of undersampling by estimating a marker of tumor proliferation (Ki-67) using MR imaging data as inputs, against a stereotactic histopathology gold standard.
Methods
MR imaging was performed with anatomic, diffusion, permeability, and perfusion sequences, in untreated glioma patients in a prospective clinical trial. Stereotactic biopsies were harvested from each patient immediately prior to surgical resection. For each biopsy, an imaging description (23 parameters) was developed, and the Ki-67 index was recorded. Machine learning models were built to estimate Ki-67 from imaging inputs, and cross validation was undertaken to determine the error in estimates. The best model was …
引用总数
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