评估用于时间序列分析的深度学习方法以检测子宫肉瘤

Gaurav Shukla, Meenakshi Dheer, Ramkumar Krishnamoorthy
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摘要

本文旨在通过时间序列评估,评价多种深度知识模型在检测子宫肉瘤方面的性能。子宫肉瘤是一种影响子宫和女性生殖器官不同部位的恶性肿瘤。时间序列分析技术因其捕捉数据时间特征的能力,已广泛应用于科学事实挖掘,特别是临床记录。本研究在 MIMIC-III 数据库中使用准确度、精确度和牢记度等指标对包括卷积神经网络(CNN)、长短时记忆(LSTM)和自组织图(SOM)在内的几种深度了解方法进行了评估。结果显示,与其他模型相比,CNN 在预测子宫肉瘤方面的准确率(0.99%)和精确率(0.75%)最高,不遗忘率(0.90%)也最高。这项研究为类似的调查提供了一个起点,调查深度学习在医学统计中检测子宫肉瘤和其他疾病的潜在能力。本文评估了用于时间序列评估的深度学习过程,以发现子宫肉瘤。本研究中使用的策略是递归神经网络(RNN)和卷积神经网络(CNN)。为了评估网络的性能,使用了美国放射学大学(ACR)子宫肉瘤成像和研究数据库的数据集。对网络的准确性、灵敏度和特异性进行了评估。此外,还对 RNN 和 CNN 进行了比较,以评估它们的性能。结果显示,CNN 比 RNN 性能更好,准确率为 97.50%,灵敏度为 95.05%,特异性为 99.25%.这与之前将深度学习技术应用于医学照片评估的研究结果一致。这项观察结果表明,RNN 和 CNN 都适合用于诊断子宫肉瘤,而 CNN 版本的诊断结果更出色,更适合手头的任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing Deep Learning Approaches for Time Series Analysis to Detect Uterine Sarcoma
This paper aims to evaluate the performance of numerous deep-gaining knowledge of fashions for detecting Uterine Sarcoma via Time series evaluation. Uterine Sarcoma is a malignant tumor that influences the uterus and different parts of the woman's reproductive machine. Time collection analysis techniques have been broadly used in scientific fact mining, specifically for clinical records, because of their capability to capture temporal traits of the data. In this look, quite several deeps getting to know fashions which include Convolutional Neural Networks (CNNs), long brief-time period reminiscence (LSTM), and Self-Organizing Maps (SOMs), were evaluated at the MIMIC-III database-the use of metrics such as accuracy, precision and bear in mind. The results showed that the CNN had the highest accuracy (zero.99%) and precision (zero.75%) and did not forget (0.90%) in predicting Uterine Sarcoma when compared with the opposite models. This examination serves as a starting point for a similar investigation into the potential capabilities of deep mastering for detecting Uterine Sarcoma and other illnesses in medical statistics. This paper evaluates deep learning processes for time series evaluation to hit upon uterine sarcoma. The strategies used in this examination are Recurrent Neural Networks (RNNs) and Convolutional Neural Networks (CNNs). To assess the performance of the networks, the dataset from the yank university of Radiology (ACR) Uterine Sarcoma Imaging and Research Database changed used. The networks were evaluated for accuracy, sensitivity, and specificity. Moreover, the RNNs and CNNs were compared to evaluate their performance. The results show that the CNN performs better than the RNN with an accuracy of ninety-seven. 50%, a sensitivity of 95.05%, and specificity of ninety-nine. 25%. It is steady with previous studies implementing deep learning techniques for medical photograph evaluation. The outcomes of this observation reveal that both RNN and CNN are appropriate for diagnosing uterine sarcoma and that the CNN version is more excellent and correct for the assignment to hand.
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