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One-Shot Learning Model for Cancer D...
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Yarlagadda, Dig Vijay Kumar.
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One-Shot Learning Model for Cancer Diagnosis from Histopathological Images.
Record Type:
Electronic resources : Monograph/item
Title/Author:
One-Shot Learning Model for Cancer Diagnosis from Histopathological Images./
Author:
Yarlagadda, Dig Vijay Kumar.
Published:
Ann Arbor : ProQuest Dissertations & Theses, : 2018,
Description:
35 p.
Notes:
Source: Masters Abstracts International, Volume: 57-04.
Contained By:
Masters Abstracts International57-04(E).
Subject:
Computer science. -
Online resource:
http://pqdd.sinica.edu.tw/twdaoapp/servlet/advanced?query=10742962
ISBN:
9780355615609
One-Shot Learning Model for Cancer Diagnosis from Histopathological Images.
Yarlagadda, Dig Vijay Kumar.
One-Shot Learning Model for Cancer Diagnosis from Histopathological Images.
- Ann Arbor : ProQuest Dissertations & Theses, 2018 - 35 p.
Source: Masters Abstracts International, Volume: 57-04.
Thesis (M.S.)--University of Missouri - Kansas City, 2018.
Cancer diagnosis from tissue biomarker scoring is a vital technique used in determining type and grade of cancer. This is a significant part of workload for pathologists, the process is tedious, time consuming, subjective, error prone and lacks inter-pathologist agreement. Thousands of patients are misdiagnosed each year, and several automated image analysis techniques using Deep Neural Networks (DNN) have been proposed for analyzing histopathology images for various cancer types and datasets. Typical challenges for a deep neural network to operate in this setting are limited datasets, gigapixel images and small percentage and high variability of nuclei indicative of malignant tumors. Previous approaches have focused on applying DNNs to different cancer imaging datasets, but their theoretical understanding of the problem is limited. In this work, we aim to gain fundamental insights into the nature of problem and propose a single model which can diagnose several types of cancers. Further, we employ recent advances in one-shot learning to enable our model to learn and expand to different types of cancer only from a few examples. We demonstrate good performance of our model on cervical cancer dataset.
ISBN: 9780355615609Subjects--Topical Terms:
523869
Computer science.
One-Shot Learning Model for Cancer Diagnosis from Histopathological Images.
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Cancer diagnosis from tissue biomarker scoring is a vital technique used in determining type and grade of cancer. This is a significant part of workload for pathologists, the process is tedious, time consuming, subjective, error prone and lacks inter-pathologist agreement. Thousands of patients are misdiagnosed each year, and several automated image analysis techniques using Deep Neural Networks (DNN) have been proposed for analyzing histopathology images for various cancer types and datasets. Typical challenges for a deep neural network to operate in this setting are limited datasets, gigapixel images and small percentage and high variability of nuclei indicative of malignant tumors. Previous approaches have focused on applying DNNs to different cancer imaging datasets, but their theoretical understanding of the problem is limited. In this work, we aim to gain fundamental insights into the nature of problem and propose a single model which can diagnose several types of cancers. Further, we employ recent advances in one-shot learning to enable our model to learn and expand to different types of cancer only from a few examples. We demonstrate good performance of our model on cervical cancer dataset.
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http://pqdd.sinica.edu.tw/twdaoapp/servlet/advanced?query=10742962
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