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retcam protable早产儿眼底筛查仪在婴幼儿眼病筛查中的应用价值
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作者 张欢 《常州实用医学》 2025年第3期157-159,共3页
目的分析retcam protable早产儿眼底筛查仪在在婴幼儿眼底病筛查中的应用价值。方法对100例早产儿用retcam protable早产儿眼底筛查仪实施眼底病变筛查,结合早产儿临床资料,分析眼病检出情况。结果100例早产儿检出患有眼底病23例,以眼... 目的分析retcam protable早产儿眼底筛查仪在在婴幼儿眼底病筛查中的应用价值。方法对100例早产儿用retcam protable早产儿眼底筛查仪实施眼底病变筛查,结合早产儿临床资料,分析眼病检出情况。结果100例早产儿检出患有眼底病23例,以眼底出血的占比最高。出生体重<1500g早产儿的眼底病占比最高(P<0.01)。患有眼底病早产儿以胎龄<28周占比最高(P<0.01)。孕期吸氧时间>10天早产儿的眼底病发生占比较高,(P<0.01)。结论retcam protable能够客观且真实地反映早产儿眼底病变情况,特别是对于早产儿视网膜的特征性病变,具有显著的检测优势。 展开更多
关键词 retcam protable 早产儿眼底筛查仪 婴幼儿 眼底病筛查 应用价值
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Interpretable Detection of Malicious Behavior in Windows Portable Executables Using Multi-Head 2D Transformers 被引量:1
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作者 Sohail Khan Mohammad Nauman 《Big Data Mining and Analytics》 EI CSCD 2024年第2期485-499,共15页
Windows malware is becoming an increasingly pressing problem as the amount of malware continues to grow and more sensitive information is stored on systems.One of the major challenges in tackling this problem is the c... Windows malware is becoming an increasingly pressing problem as the amount of malware continues to grow and more sensitive information is stored on systems.One of the major challenges in tackling this problem is the complexity of malware analysis,which requires expertise from human analysts.Recent developments in machine learning have led to the creation of deep models for malware detection.However,these models often lack transparency,making it difficult to understand the reasoning behind the model’s decisions,otherwise known as the black-box problem.To address these limitations,this paper presents a novel model for malware detection,utilizing vision transformers to analyze the Operation Code(OpCode)sequences of more than 350000 Windows portable executable malware samples from real-world datasets.The model achieves a high accuracy of 0.9864,not only surpassing the previous results but also providing valuable insights into the reasoning behind the classification.Our model is able to pinpoint specific instructions that lead to malicious behavior in malware samples,aiding human experts in their analysis and driving further advancements in the field.We report our findings and show how causality can be established between malicious code and actual classification by a deep learning model,thus opening up this black-box problem for deeper analysis. 展开更多
关键词 machine learning MALWARE vision transformers Windows protable Executable(PE)
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