%0 Journal Article %T An Effective Two Way Classification of Breast Cancer Images: A Detailed Review %J Asian Pacific Journal of Cancer Prevention %I West Asia Organization for Cancer Prevention (WAOCP), APOCP's West Asia Chapter. %Z 1513-7368 %A P, Sinthia %A M, Malathi %D 2018 %\ 12/01/2018 %V 19 %N 12 %P 3335-3339 %! An Effective Two Way Classification of Breast Cancer Images: A Detailed Review %K Mammogram %K breast cancer %K k-means %K SVM %R 10.31557/APJCP.2018.19.12.3335 %X Cancer, a disease of cells, causes cell growth which differs from normal cell growth ratio, this cell growth spreadsin the human body and kills the body cells. Breast cancer, it’s a highly heterogeneous disease and western womencommonly witness this. Mammography, a pre-screening X-ray based check is used to diagnose woman’s breast cancer.This basic test mode helps in identifying breast cancer at early stage and this early stage detection would support inrecovering more number of women from this serious disease. Medical centres deputed highly skilled radiologists andthey were given the responsibility of analysing this mammography results but still human errors are inevitable. An errorfrequency ratio is high when radiologists exhausted in their analysis task and leads variations in either observationsie., internal or external observation. Also, quality of the image plays vital role in Mammographic sensitivity and leadsto variation. Several automation processes were tried in streamlining and standardising diagnosis analysis process andquality of breast cancer images were improved. This paper inducts a two way mode algorithm for grouping of breastcancer images to 1. benign (tumour growing, but not dangerous) and 2. malignant (cannot be controlled, it causes death)classes. Two-way mode data mining algorithms are used due to thinly dispersed distribution of abnormal mammograms.First type algorithm is k-means algorithm, which regroups the given data elements into clusters (ie., prioritized by theusers). Second type algorithm is Support Vector Machine (SVM), which is used to identify the most suitable functionwhich differentiates the members based on the training data. %U https://journal.waocp.org/article_77412_8fbcb6fede4e15e68460e2291f7e2ef8.pdf