ABSTRACT
Breast cancer is a top killer illness for women globally, but early and effective screening
can increase their survival rate. Mammography is the tool used by a radiologist to screen
for breast cancer, however, a radiologist is susceptible to human observer variability, and
therefore, reading and interpretation of mammography test results depend on the expertise
of the radiologist administering the test. To improve the reading and interpretation
accuracy of the test, researchers’ developed computer-aided extraction descriptors that
extract discriminant features. These descriptors include the Local Binary Patterns (LBP),
the Local Ternary Patterns (LTP), and the Local Directional Patterns (LDP), however, they
have not yet yielded satisfactory results in differentiating breast cancer tumor types. The
LBP descriptor is inadequately dependable in capturing breast cancer discriminant features
because it is easily affected by noise. The LTP descriptor uses a fixed threshold value for
all images in a dataset, making it not invariant to pixel value transformation. It is also not
practically easy to select an optimum threshold value in real application domains. The LDP
descriptor relies on top k significant directional responses and ignores the remaining 8-k
directional responses. Disregarding the remaining directional responses reduces the
computation efficiency since each pixel in an image carries subtle information. Given the
limitations identified among the mentioned local texture descriptors, developing an
effective texture descriptor becomes a viable and challenging research problem. Therefore,
this study seeks to develop an improved local texture descriptor that considers all
directional responses and applies an adaptive threshold in encoding image gradient. The
new Local Directional Ternary Pattern (LDTP) texture descriptor calculates the absolute
difference between the value of the center pixel and the values of its local neighboring
pixels for a 3x3 image region. To get edge responses in eight directions, the absolute
differences are convolved with a kirsch mask, then the pixels are transformed into zeros
and ones using mini-max normalization. We then passed the normalized values through a
soft-max function to get the probability of an edge in a certain direction. Then, two
threshold values are calculated and used to split the probability space into three parts for -
1, 0, +1 bits to generate a ternary pattern. The resultant Local Directional Ternary Pattern
(LDTP) code is then split into a positive and negative LDTP code. Histograms of negative
and positive LDTP encoded images are fused to get texture features. We validated the
LDTP texture descriptor on the Mammographic Image Analysis Society (MIAS) breast
cancer dataset using Support Vector Machine (SVM) and Artificial Neural Network
(ANN) classifiers for normal/abnormal and benign/malignant classes. When the LDTP
texture descriptor was compared against LDP, LTP, and other existing texture descriptors,
it showed robustness and reliability in encoding an image gradient. The highest
classification accuracy was attained by the SVM classifier, with 97.32% and 93.93% for
normal/abnormal and benign/malignant classes, respectively.
, M & WALOWE, M (2021). Alocal Directional Ternary Pattern Texture Descriptor For Mammographic Breast Cancer Classification. Afribary. Retrieved from https://afribary.com/works/alocal-directional-ternary-pattern-texture-descriptor-for-mammographic-breast-cancer-classification
, MWADULO and MARY WALOWE "Alocal Directional Ternary Pattern Texture Descriptor For Mammographic Breast Cancer Classification" Afribary. Afribary, 07 May. 2021, https://afribary.com/works/alocal-directional-ternary-pattern-texture-descriptor-for-mammographic-breast-cancer-classification. Accessed 10 Mar. 2025.
, MWADULO, MARY WALOWE . "Alocal Directional Ternary Pattern Texture Descriptor For Mammographic Breast Cancer Classification". Afribary, Afribary, 07 May. 2021. Web. 10 Mar. 2025. < https://afribary.com/works/alocal-directional-ternary-pattern-texture-descriptor-for-mammographic-breast-cancer-classification >.
, MWADULO and WALOWE, MARY . "Alocal Directional Ternary Pattern Texture Descriptor For Mammographic Breast Cancer Classification" Afribary (2021). Accessed March 10, 2025. https://afribary.com/works/alocal-directional-ternary-pattern-texture-descriptor-for-mammographic-breast-cancer-classification