CWAOMT: Class Weight balanced Artificial Neural Network model for the Classification of Ovarian Malignancy from Transcriptomic Profiles

Asha Abraham, R. Kayalvizhi, Habeeb Shaik Mohideen, Ancy Abraham
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引用次数: 1

Abstract

The ability to accurately diagnose cancer is crucial to saving lives. Epithelial Ovarian Cancer (EOC) is a hard and serious disease that affects many women in worldwide. It has a poor prognosis and a molecular pathogenesis that is still unknown. Nowadays, RNA-Seq-based gene expression data have paved the way for more effective treatment in order to increase the early diagnosis of cancer. In this paper, a classweight balancing ANN is employed to detect recurrent ovarian cancer for RNA-Seq data. The model performed admirably, accurately classifying both primary and recurrent tumors without bias with 98% of accuracy rate. Later the DL model is saved using Python’s Pickle tool to avoid re-training and the pre-trained model generated for the same output. The proposed pretrained CWAOMT produced output within 12milliseconds as compared with 466milliseconds before pretraining. The experiment shows that the suggested CWAOMT performed better than the classification without data balancing. This pretrained model can be employed for later classifications of similar data without losing the achieved trained outcome.
基于转录组谱的卵巢恶性肿瘤分类的类权平衡人工神经网络模型
准确诊断癌症的能力对于挽救生命至关重要。上皮性卵巢癌(EOC)是一种影响世界各地许多妇女的严重疾病。预后差,分子发病机制尚不清楚。如今,基于rna - seq的基因表达数据为更有效的治疗铺平了道路,以增加癌症的早期诊断。本文采用类权平衡神经网络检测复发性卵巢癌的RNA-Seq数据。该模型的表现令人钦佩,准确地对原发性和复发性肿瘤进行了分类,准确率为98%。然后使用Python的Pickle工具保存DL模型,以避免重新训练和为相同的输出生成预训练模型。与预训练前的466毫秒相比,所提出的预训练CWAOMT在12毫秒内产生输出。实验表明,本文提出的CWAOMT算法比不考虑数据平衡的分类算法具有更好的分类效果。这种预训练模型可以用于以后对类似数据的分类,而不会丢失已获得的训练结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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