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Chi-squared Automatic Interaction Detection Decision Tree Analysis of Risk Factors for Infant Anemia in Beijing, China 被引量:9
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作者 Fang Ye Zhi-Hua Chen +4 位作者 Jie Chen Fang Liu Yong Zhang Qin-Ying Fan Lin Wang 《Chinese Medical Journal》 SCIE CAS CSCD 2016年第10期1193-1199,共7页
Background: In the past decades, studies on infant anemia have mainly focused on rural areas of China. With the increasing heterogeneity of population in recent years, available information on infant anemia is inconc... Background: In the past decades, studies on infant anemia have mainly focused on rural areas of China. With the increasing heterogeneity of population in recent years, available information on infant anemia is inconclusive in large cities of China, especially with comparison between native residents and floating population. This population-based cross-sectional study was implemented to determine the anemic status of infants as well as the risk factors in a representative downtown area of Beijing. Methods: As useful methods to build a predictive model, Chi-squared automatic interaction detection (CHAID) decision tree analysis and logistic regression analysis were introduced to explore risk factors of infant anemia. A total of 1091 infants aged 6-12 months together with their parents/caregivers living at Heping Avenue Subdistrict of Beijing were surveyed from January 1,2013 to December 31, 2014. Results: The prevalence of anemia was 12.60% with a range of 3.47%-40.00% in different subgroup characteristics. The CHAID decision tree model has demonstrated multilevel interaction among risk factors through stepwise pathways to detect anemia. Besides the three predictors identified by logistic regression model including maternal anemia during pregnancy, exclusive breastfeeding in the first 6 months, and floating population, CHAID decision tree analysis also identified the fourth risk factor, the maternal educational level, with higher overall classification accuracy and larger area below the receiver operating characteristic curve. Conclusions: The infant anemic status in metropolis is complex and should be carefully considered by the basic health care practitioners. CHAID decision tree analysis has demonstrated a better performance in hierarchical analysis of population with great heterogeneity. Risk factors identified by this study might be meaningful in the early detection and prompt treatment of infant anemia in large cities. 展开更多
关键词 chi-squared automatic Interaction detection Decision Tree Analysis Infant Anemia Logistic Regression Analysis
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Automatic Diagnosis of Polycystic Ovarian Syndrome Using Wrapper Methodology with Deep Learning Techniques
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作者 Mohamed Abouhawwash S.Sridevi +3 位作者 Suma Christal Mary Sundararajan Rohit Pachlor Faten Khalid Karim Doaa Sami Khafaga 《Computer Systems Science & Engineering》 SCIE EI 2023年第10期239-253,共15页
One of the significant health issues affecting women that impacts their fertility and results in serious health concerns is Polycystic ovarian syndrome(PCOS).Consequently,timely screening of polycystic ovarian syndrom... One of the significant health issues affecting women that impacts their fertility and results in serious health concerns is Polycystic ovarian syndrome(PCOS).Consequently,timely screening of polycystic ovarian syndrome can help in the process of recovery.Finding a method to aid doctors in this procedure was crucial due to the difficulties in detecting this condition.This research aimed to determine whether it is possible to optimize the detection of PCOS utilizing Deep Learning algorithms and methodologies.Additionally,feature selection methods that produce the most important subset of features can speed up calculation and enhance the effectiveness of classifiers.In this research,the tri-stage wrapper method is used because it reduces the computation time.The proposed study for the Automatic diagnosis of PCOS contains preprocessing,data normalization,feature selection,and classification.A dataset with 39 characteristics,including metabolism,neuroimaging,hormones,and biochemical information for 541 subjects,was employed in this scenario.To start,this research pre-processed the information.Next for feature selection,a tri-stage wrapper method such as Mutual Information,ReliefF,Chi-Square,and Xvariance is used.Then,various classification methods are tested and trained.Deep learning techniques including convolutional neural network(CNN),multi-layer perceptron(MLP),Recurrent neural network(RNN),and Bi long short-term memory(Bi-LSTM)are utilized for categorization.The experimental finding demonstrates that with effective feature extraction process using tri stage wrapper method+CNN delivers the highest precision(97%),high accuracy(98.67%),and recall(89%)when compared with other machine learning algorithms. 展开更多
关键词 Deep learning automatic detection polycystic ovarian syndrome tri-stage wrapper method mutual information RELIEF chi-square
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高低危生活方式食管癌患者放化疗临床疗效的比较 被引量:2
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作者 李刚 朱川 +6 位作者 任必勇 邓超 张军 张力 李庆平 刘学芬 熊德明 《世界华人消化杂志》 CAS 北大核心 2008年第7期771-775,共5页
目的:研究高危与低危生活方式食管癌患者放化疗后的临床效果.方法:对重庆市万州地区食管癌患者496例采用卡方自动交互检测法建立分类树模型进行危险因素筛选.通过巢式病例对照研究分析高危与低危生活方式患者临床放化疗效果.结果:从分... 目的:研究高危与低危生活方式食管癌患者放化疗后的临床效果.方法:对重庆市万州地区食管癌患者496例采用卡方自动交互检测法建立分类树模型进行危险因素筛选.通过巢式病例对照研究分析高危与低危生活方式患者临床放化疗效果.结果:从分类树模型15个潜在危险因素中筛选出7个主要危险因素,进食快和饮水污染是最重要的危险因素.在饮酒者中,吸烟、进食过快者更容易出现食管癌.具有肿瘤生活方式高危险因素者放化疗中位生存时间(21mo)高于低危险因素生活方式组患者中位生存时间(14mo),差异具有显著性(t=15.87,P<0.01).结论:饮水污染和不良饮食习惯(进食过快烫、吸烟与饮酒)可能是该地区食管癌的生活方式高危因素,放化疗可能使高危生活方式食管癌患者临床受益更多。 展开更多
关键词 食管肿瘤 流行病学 危险因素 饮食习惯 化疗 放疗 卡方自动交互检测
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