Mustafa Umit Oner
Overview
Explore the profile of Mustafa Umit Oner including associated specialties, affiliations and a list of published articles.
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Articles
5
Citations
838
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0
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Recent Articles
1.
Oner M, Kye-Jet J, Lee H, Sung W
Med Image Anal
. 2023 Apr;
87:102813.
PMID: 37120993
Histopathology is a crucial diagnostic tool in cancer and involves the analysis of gigapixel slides. Multiple instance learning (MIL) promises success in digital histopathology thanks to its ability to handle...
2.
Oner M, Ng M, Giron D, Chen Xi C, Yuan Xiang L, Singh M, et al.
Patterns (N Y)
. 2022 Dec;
3(12):100642.
PMID: 36569545
Pathologists diagnose prostate cancer by core needle biopsy. In low-grade and low-volume cases, they look for a few malignant glands out of hundreds within a core. They may miss a...
3.
Oner M, Sung W, Lee H
Patterns (N Y)
. 2022 Feb;
3(2):100447.
PMID: 35199070
Oner, an early-career researcher, and Lee and Sung, group leaders, have developed a deep learning model for accurate prediction of the proportion of cancer cells within tumor tissue. This is...
4.
Oner M, Chen J, Revkov E, James A, Heng S, Kaya A, et al.
Patterns (N Y)
. 2022 Feb;
3(2):100399.
PMID: 35199060
Tumor purity is the percentage of cancer cells within a tissue section. Pathologists estimate tumor purity to select samples for genomic analysis by manually reading hematoxylin-eosin (H&E)-stained slides, which is...
5.
Bejnordi B, Veta M, van Diest P, van Ginneken B, Karssemeijer N, Litjens G, et al.
JAMA
. 2017 Dec;
318(22):2199-2210.
PMID: 29234806
Importance: Application of deep learning algorithms to whole-slide pathology images can potentially improve diagnostic accuracy and efficiency. Objective: Assess the performance of automated deep learning algorithms at detecting metastases in...