Literature DB >> 33536550

Aggregation of cohorts for histopathological diagnosis with deep morphological analysis.

Jeonghyuk Park1, Yul Ri Chung2, Seo Taek Kong3, Yeong Won Kim3, Hyunho Park3, Kyungdoc Kim3, Dong-Il Kim4, Kyu-Hwan Jung3.   

Abstract

There have been substantial efforts in using deep learning (DL) to diagnose cancer from digital images of pathology slides. Existing algorithms typically operate by training deep neural networks either specialized in specific cohorts or an aggregate of all cohorts when there are only a few images available for the target cohort. A trade-off between decreasing the number of models and their cancer detection performance was evident in our experiments with The Cancer Genomic Atlas dataset, with the former approach achieving higher performance at the cost of having to acquire large datasets from the cohort of interest. Constructing annotated datasets for individual cohorts is extremely time-consuming, with the acquisition cost of such datasets growing linearly with the number of cohorts. Another issue associated with developing cohort-specific models is the difficulty of maintenance: all cohort-specific models may need to be adjusted when a new DL algorithm is to be used, where training even a single model may require a non-negligible amount of computation, or when more data is added to some cohorts. In resolving the sub-optimal behavior of a universal cancer detection model trained on an aggregate of cohorts, we investigated how cohorts can be grouped to augment a dataset without increasing the number of models linearly with the number of cohorts. This study introduces several metrics which measure the morphological similarities between cohort pairs and demonstrates how the metrics can be used to control the trade-off between performance and the number of models.

Entities:  

Year:  2021        PMID: 33536550     DOI: 10.1038/s41598-021-82642-1

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  2 in total

1.  Comparative analysis of high- and low-level deep learning approaches in microsatellite instability prediction.

Authors:  Jeonghyuk Park; Yul Ri Chung; Akinao Nose
Journal:  Sci Rep       Date:  2022-07-18       Impact factor: 4.996

2.  Deep learning features encode interpretable morphologies within histological images.

Authors:  Ali Foroughi Pour; Brian S White; Jonghanne Park; Todd B Sheridan; Jeffrey H Chuang
Journal:  Sci Rep       Date:  2022-06-08       Impact factor: 4.996

  2 in total

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