Abstract

BackgroundOne of the most challenging tasks for bladder cancer diagnosis is to histologically differentiate two early stages, non-invasive Ta and superficially invasive T1, the latter of which is associated with a significantly higher risk of disease progression. Indeed, in a considerable number of cases, Ta and T1 tumors look very similar under microscope, making the distinction very difficult even for experienced pathologists. Thus, there is an urgent need for a favoring system based on machine learning (ML) to distinguish between the two stages of bladder cancer.MethodsA total of 1177 images of bladder tumor tissues stained by hematoxylin and eosin were collected by pathologists at University of Rochester Medical Center, which included 460 non-invasive (stage Ta) and 717 invasive (stage T1) tumors. Automatic pipelines were developed to extract features for three invasive patterns characteristic to the T1 stage bladder cancer (i.e., desmoplastic reaction, retraction artifact, and abundant pinker cytoplasm), using imaging processing software ImageJ and CellProfiler. Features extracted from the images were analyzed by a suite of machine learning approaches.ResultsWe extracted nearly 700 features from the Ta and T1 tumor images. Unsupervised clustering analysis failed to distinguish hematoxylin and eosin images of Ta vs. T1 tumors. With a reduced set of features, we successfully distinguished 1177 Ta or T1 images with an accuracy of 91–96% by six supervised learning methods. By contrast, convolutional neural network (CNN) models that automatically extract features from images produced an accuracy of 84%, indicating that feature extraction driven by domain knowledge outperforms CNN-based automatic feature extraction. Further analysis revealed that desmoplastic reaction was more important than the other two patterns, and the number and size of nuclei of tumor cells were the most predictive features.ConclusionsWe provide a ML-empowered, feature-centered, and interpretable diagnostic system to facilitate the accurate staging of Ta and T1 diseases, which has a potential to apply to other types of cancer.

Highlights

  • One of the most challenging tasks for bladder cancer diagnosis is to histologically differentiate two early stages, non-invasive Ta and superficially invasive T1, the latter of which is associated with a significantly higher risk of disease progression

  • We aim to develop a novel MLempowered, feature-centered, and interpretable diagnostic system to facilitate the accurate staging of Ta and T1 bladder tumors

  • Histopathological slides Upon approval from the Institutional Review Board at University of Rochester Medical Center (URMC), we collected a total of 1177 images from hematoxylin and eosin (H&E)-stained bladder cancer tissues, which included 460 non-invasive and 717 invasive urothelial tumors

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Summary

Introduction

One of the most challenging tasks for bladder cancer diagnosis is to histologically differentiate two early stages, non-invasive Ta and superficially invasive T1, the latter of which is associated with a significantly higher risk of disease progression. Three-fourths of urothelial carcinomas are non-muscle invasive [2]. According to the current WHO classification system, non-muscle invasive bladder cancers (NMIBCs) can be divided into three groups: Ta (non-invasive papillary), Tis (carcinoma in situ), and T1 (invasion into subepithelial connective tissue/lamina propria), which account for approximately 70, 10, and 20% of NMIBC, respectively [2, 3]. T1 tumors are mostly high-grade and have the potential to progress to muscle invasion and extravesical dissemination [3, 5]. Accurate diagnosis of non-invasive (Ta) versus invasive (T1) bladder cancers is vitally important and will help clinicians to make a timely and appropriate treatment plan for patients

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