Abstract

Traditional deep learning methods are sub-optimal in classifying ambiguity features, which often arise in noisy and hard to predict categories, especially, to distinguish semantic scoring. Semantic scoring, depending on semantic logic to implement evaluation, inevitably contains fuzzy description and misses some concepts, for example, the ambiguous relationship between normal and probably normal always presents unclear boundaries (normal - more likely normal - probably normal). Thus, human error is common when annotating images. Differing from existing methods that focus on modifying kernel structure of neural networks, this study proposes a dominant fuzzy fully connected layer (FFCL) for Breast Imaging Reporting and Data System (BI-RADS) scoring and validates the universality of this proposed structure. This proposed model aims to develop complementary properties of scoring for semantic paradigms, while constructing fuzzy rules based on analyzing human thought patterns, and to particularly reduce the influence of semantic conglutination. Specifically, this semantic-sensitive defuzzier layer projects features occupied by relative categories into semantic space, and a fuzzy decoder modifies probabilities of the last output layer referring to the global trend. Moreover, the ambiguous semantic space between two relative categories shrinks during the learning phases, as the positive and negative growth trends of one category appearing among its relatives were considered. We first used the Euclidean Distance (ED) to zoom in the distance between the real scores and the predicted scores, and then employed two sample t test method to evidence the advantage of the FFCL architecture. Extensive experimental results performed on the CBIS-DDSM dataset show that our FFCL structure can achieve superior performances for both triple and multiclass classification in BI-RADS scoring, outperforming the state-of-the-art methods.

Highlights

  • DEEP learning has recently gathered huge interest across a multitude of disciplines [1, 2], which has resulted in researchers applying deep learning to score medical images

  • Fuzzy theory to optimize multi-input and single-output static systems affected by noise has been developed [11], the linear and nonlinear defuzzifiers based on fuzzy rules, compared with conventional deterministic representations, can reduce the uncertainties encountered in these raw data [12], as well as methods to identify nearest-neighbor memeplexes by fuzzy systems [13]

  • We verified that the visual enhancement method cannot substantially improve the classification performance, and we provided an evidence that the transfer learning strategy, especially trained by natural categories, can extract medical features

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Summary

A Heuristic Neural Network Structure Relying on Fuzzy Logic for Images Scoring

Cheng Kang, School of Informatics, the University of Leicester, Leicester, United Kingdom. Xiang Yu [Student Member, IEEE], School of Informatics, the University of Leicester, Leicester, United Kingdom Shui-Hua Wang* [Member, IEEE], School of Computer Science and Technology, Henan Polytechnic University, Jiaozuo, Henan 454000, P R China & School of Mathematics and Actuarial Science, the University of Leicester, Leicester, LE1 7RH, United Kingdom David S. Guttery*, Leicester Cancer Research Centre, University of Leicester, Leicester, United Kingdom Hari Mohan Pandey*, Department of Computer Science, Edge Hill University, Lancashire, UK Yingli Tian* [Fellow, IEEE], Department of Electrical Engineering, The City College of New York, 10031, USA Yu-Dong Zhang* [Senior Member, IEEE] Informatics, University of Leicester, Leicester, LE1 7RH, UK & Department of Information Systems, Faculty of Computing and Information Technology, King Abdulaziz University, Jeddah 21589, Saudi Arabia

Introduction
A Fuzzy scoring and structure of fuzzy fully connected layer
Experimental Results
C Networks training strategy
Conclusion
Full Text
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