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      A pathomic approach for tumor-infiltrating lymphocytes classification on breast cancer digital pathology images

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          Abstract

          Background and objectives

          The detection of tumor-infiltrating lymphocytes (TILs) could aid in the development of objective measures of the infiltration grade and can support decision-making in breast cancer (BC). However, manual quantification of TILs in BC histopathological whole slide images (WSI) is currently based on a visual assessment, thus resulting not standardized, not reproducible, and time-consuming for pathologists. In this work, a novel pathomic approach, aimed to apply high-throughput image feature extraction techniques to analyze the microscopic patterns in WSI, is proposed. In fact, pathomic features provide additional information concerning the underlying biological processes compared to the WSI visual interpretation, thus providing more easily interpretable and explainable results than the most frequently investigated Deep Learning based methods in the literature.

          Methods

          A dataset containing 1037 regions of interest with tissue compartments and TILs annotated on 195 TNBC and HER2+ BC hematoxylin and eosin (H&E)-stained WSI was used. After segmenting nuclei within tumor-associated stroma using a watershed-based approach, 71 pathomic features were extracted from each nucleus and reduced using a Spearman's correlation filter followed by a nonparametric Wilcoxon rank-sum test and least absolute shrinkage and selection operator. The relevant features were used to classify each candidate nucleus as either TILs or non-TILs using 5 multivariable machine learning classification models trained using 5-fold cross-validation (1) without resampling, (2) with the synthetic minority over-sampling technique and (3) with downsampling. The prediction performance of the models was assessed using ROC curves.

          Results

          21 features were selected, with most of them related to the well-known TILs properties of having regular shape, clearer margins, high peak intensity, more homogeneous enhancement and different textural pattern than other cells. The best performance was obtained by Random-Forest with ROC AUC of 0.86, regardless of resampling technique.

          Conclusions

          The presented approach holds promise for the classification of TILs in BC H&E-stained WSI and could provide support to pathologists for a reliable, rapid and interpretable clinical assessment of TILs in BC.

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          Most cited references62

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          NIH Image to ImageJ: 25 years of image analysis

          For the past twenty five years the NIH family of imaging software, NIH Image and ImageJ have been pioneers as open tools for scientific image analysis. We discuss the origins, challenges and solutions of these two programs, and how their history can serve to advise and inform other software projects.
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            Regression Shrinkage and Selection Via the Lasso

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              U-Net: Convolutional Networks for Biomedical Image Segmentation

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                Author and article information

                Contributors
                Journal
                Heliyon
                Heliyon
                Heliyon
                Elsevier
                2405-8440
                09 March 2023
                March 2023
                09 March 2023
                : 9
                : 3
                : e14371
                Affiliations
                [a ]IRCCS SYNLAB SDN, Via E. Gianturco 113, Naples, 80143, Italy
                [b ]Department of Electrical Engineering and Information Technologies, University of Naples Federico II, Claudio 21, Naples, 80125, Italy
                Author notes
                []Corresponding author. valentina.brancato@ 123456synlab.it
                [1]

                Mario Verdicchio and Valentina Brancato contributed equally to this article and share first authorship.

                Article
                S2405-8440(23)01578-5 e14371
                10.1016/j.heliyon.2023.e14371
                10025040
                36950640
                e9eb7b3a-be24-4a23-b5d7-40c57e000d99
                © 2023 The Authors

                This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).

                History
                : 20 February 2023
                : 3 March 2023
                : 3 March 2023
                Categories
                Research Article

                digital pathology,pathomics,tumor infiltrating lymphocytes,breast cancer,machine learning

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