Breast cancer disease prediction using ensemble techniques

Rao T. Chalapathi, Naik Kshiramani
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Abstract

Breast Cancer is a highly lethal reproductive cancer that disproportionately affects women and is a leading cause of death worldwide. Cancer is characterized by the uncontrolled division and invasion of abnormal cells into the surrounding tissues. Early detection is crucial in the diagnosis of Breast Cancer, as it accounts for a significant percentage of cancer diagnoses and deaths among women. To prevent unnecessary tests, accurate classification of malignant and benign tumors is necessary. Researchers have developed numerous automated classification methods for Breast Cancer, with soft computing techniques being widely used due to their high performance in classification. Machine learning algorithms, known for their ability to identify critical features from medical datasets, are also extensively utilized in Breast Cancer prediction. Therefore, this study seeks to employ Boosting algorithms in machine learning to predict Breast Cancer accurately. Over the years, the mortality rate in Breast Cancer diagnosis has decreased due to research efforts.
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使用集合技术预测乳腺癌疾病
乳腺癌是一种高度致命的生殖癌症,对妇女的影响尤为严重,是全世界死亡的主要原因。癌症的特点是不受控制的分裂和异常细胞侵入周围组织。早期发现对乳腺癌的诊断至关重要,因为它占妇女癌症诊断和死亡的很大比例。为了避免不必要的检查,有必要对恶性肿瘤和良性肿瘤进行准确的分类。研究人员已经开发了许多乳腺癌的自动分类方法,其中软计算技术由于其在分类方面的高性能而被广泛使用。机器学习算法以其从医疗数据集中识别关键特征的能力而闻名,也广泛用于乳腺癌预测。因此,本研究寻求在机器学习中使用Boosting算法来准确预测乳腺癌。多年来,由于研究的努力,乳腺癌诊断的死亡率已经下降。
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Vehicular detection technique using image processing WHITE BLOOD CELL IMAGE CLASSIFICATION FOR ASSISTING PATHOLOGIST USING DEEP MACHINE LEARNING: THE COMPARATIVE APPROACH PRIMARY SCREENING TECHNIQUE FOR DETECTING BREAST CANCER BANK TRANSACTION USING IRIS RECOGNITION SYSTEM Implementation of image fusion model using DCGAN
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