Breast Tumor Classification Diagnosis Based on LS-SVM
Chao Liu
1,2
,
3
, Bo Zhou
1
, Qingzhu Li
4
, Yu Chen
1
,Guowei Qin
1
and Guangkuo Hu
2
,
3
1
Kunming University of Science and Technology;
2
The First People’s Hospital of Yunnan Province;
3
Affiliated Hospital of Kunming University of Science and Technology;
4
Yan’ An Hospital of Kunming
32656136@qq.com
Keywords: Breast tumor; LS-SVM; Neural network; Support vector machine; clinical diagnostic value.
Abstract: To accurately predict breast cancer, breast cancer prediction method based on least squares support vector
(LS-SVM) proposed. Patients with breast cancer through the data on the basis of 469 cases, including 400
cases of data relevance vector machine training, and the remaining 69 cases data sample tests, and finally
through with neural networks, support vector machines comparison, breast cancer diagnosis model based on
LS-SVM prediction accuracy is higher than the neural network and support vector machine. Has good
diagnostic value of breast cancer diagnosis based on LS-SVM model, which provides a new method for
breast cancer diagnosis.
1 INTRODUCTION
Cancer(LU Xin-guo,2010)is called malignant tumor
in field of medicine. It is a kind of cells cancerous
result at partial tissue caused by action of carious
factors such as the chemical, physical, microbe and
its metabolic product. It is often shown as: partial
tissue abnormal cellular proliferation and form of
partial lump. Cancer is a kind of disease caused by
multiple causes, stages and mutations of normal
cells in the body. Cancer is characterized by: ability
to infinite proliferation and loss of contact inhibition
phenomena at the same time, the cancer cells
between viscosity reduced, easy to be lectin
agglutination, this will consume a lot of nutrients of
cancer patients(LIN Xiao-gang,2009);Cancer cells
release a variety of toxins, causing the human body
to produce a series of symptoms; cancer cells can
also be spread through blood, lymphatic or direct
methods such as transferred to the whole body,
leading to a large amount of nutrients in the body is
consumed, and viscera function is damaged. Benign
tumor is easy to clean, and generally, no transfer, no
recurrence, only extrusion of organs, tissues and
blocking effect. Malignant tumor leads to tumor
metastasis and malignant tumor destroys the normal
structure and function of tissues and organs, cause
necrosis bleeding merge infection, the patient
eventually died due to organ failure.
Medical studies have found that the nuclear
micrograph of breast tumor lesion tissue is different
from that of normal tissue, but it is difficult to
distinguish it by general image processing method.
Therefore, it is particularly important to use
scientific methods to diagnose benign or malignant
breast tumors according to the nuclear microscopic
images of breast tumor foci(XU Wei-yun,2003).
Based on this, this paper proposes to use LS-
SVM to conduct classified diagnosis of breast
tumors, and to prove its effectiveness and accuracy
by comparison.
2 PRINCIPLE OF LEAST
SQUARES SUPPORT VECTOR
MACHINE ALGORITHM
In 1995, Corinna Cortes and Vapnik initially put
forward support vector machine (SVM) which show
unique advantages in solving nonlinear, high
dimension, small sample, and can be applied to the
function fitting other machine learning problems
(WANG Yu-hong,2004).It can be expressed as
follows: