Title :
High-Level Intuitive Features (HLIFs) for Intuitive Skin Lesion Description
Author :
Amelard, Robert ; Glaister, Jeffrey ; Wong, Alexander ; Clausi, David A.
Author_Institution :
Dept. of Syst. Design Eng., Univ. of Waterloo, Waterloo, ON, Canada
Abstract :
A set of high-level intuitive features (HLIFs) is proposed to quantitatively describe melanoma in standard camera images. Melanoma is the deadliest form of skin cancer. With rising incidence rates and subjectivity in current clinical detection methods, there is a need for melanoma decision support systems. Feature extraction is a critical step in melanoma decision support systems. Existing feature sets for analyzing standard camera images are comprised of low-level features, which exist in high-dimensional feature spaces and limit the system´s ability to convey intuitive diagnostic rationale. The proposed HLIFs were designed to model the ABCD criteria commonly used by dermatologists such that each HLIF represents a human-observable characteristic. As such, intuitive diagnostic rationale can be conveyed to the user. Experimental results show that concatenating the proposed HLIFs with a full low-level feature set increased classification accuracy, and that HLIFs were able to separate the data better than low-level features with statistical significance. An example of a graphical interface for providing intuitive rationale is given.
Keywords :
biomedical optical imaging; cameras; cancer; feature extraction; formal logic; medical image processing; skin; tumours; ABCD criteria; HLI feature extraction; HLI feature sets; HLIF design; camera image classification accuracy; camera image data separation; clinical melanoma detection methods; clinical skin cancer detection methods; deadliest skin cancer form; dermatologists; high-dimensional feature spaces; high-level intuitive features; human-observable characteristic; intuitive diagnostic rationale; intuitive graphical interface; intuitive skin lesion description; low-level feature set; melanoma decision support systems; melanoma incidence rates; melanoma subjectivity; quantitative skin cancer description; quantitatively melanoma description; skin cancer incidence rates; skin cancer subjectivity; standard camera image analysis; Complexity theory; Feature extraction; Image color analysis; Lesions; Malignant tumors; Shape; Skin; Decision support; feature extraction; melanoma; pigmented skin lesion;
Journal_Title :
Biomedical Engineering, IEEE Transactions on
DOI :
10.1109/TBME.2014.2365518