| Literature DB >> 34745746 |
Bofan Song1,2, Sumsum Sunny3, Shaobai Li1, Keerthi Gurushanth4, Pramila Mendonca5, Nirza Mukhia4, Sanjana Patrick6, Shubha Gurudath4, Subhashini Raghavan4, Imchen Tsusennaro7, Shirley T Leivon7, Trupti Kolur5, Vivek Shetty5, Vidya R Bushan5, Rohan Ramesh7, Tyler Peterson1, Vijay Pillai5, Petra Wilder-Smith8, Alben Sigamani5, Amritha Suresh3,5, Moni Abraham Kuriakose9, Praveen Birur4,5, Rongguang Liang1,10.
Abstract
In medical imaging, deep learning-based solutions have achieved state-of-the-art performance. However, reliability restricts the integration of deep learning into practical medical workflows since conventional deep learning frameworks cannot quantitatively assess model uncertainty. In this work, we propose to address this shortcoming by utilizing a Bayesian deep network capable of estimating uncertainty to assess oral cancer image classification reliability. We evaluate the model using a large intraoral cheek mucosa image dataset captured using our customized device from high-risk population to show that meaningful uncertainty information can be produced. In addition, our experiments show improved accuracy by uncertainty-informed referral. The accuracy of retained data reaches roughly 90% when referring either 10% of all cases or referring cases whose uncertainty value is greater than 0.3. The performance can be further improved by referring more patients. The experiments show the model is capable of identifying difficult cases needing further inspection.Entities:
Year: 2021 PMID: 34745746 PMCID: PMC8547976 DOI: 10.1364/BOE.432365
Source DB: PubMed Journal: Biomed Opt Express ISSN: 2156-7085 Impact factor: 3.562