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201Tl을 이용한 심근관류 SPECT에서 재구성 방법에 따른 작은 용적 심장의 정량 지표 변화 (Quantitative Indices of Small Heart According to Reconstruction Method of Myocardial Perfusion SPECT Using the 201Tl)

  • 김성환;류재광;윤순상;김은혜
    • 핵의학기술
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    • 제17권1호
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    • pp.18-24
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    • 2013
  • $^{201}Tl$을 이용한 심근관류 SPECT 검사는 좌심실의 생존능 및 심장 기능의 정량적 평가를 함에 있어 중요한 방법으로서 현재 영상의 질을 향상시키기 위해 다양한 재구성 방법들이 이용 되고 있다. 하지만 작은 용적 심장에서는 부분용적효과로 인해 재구성 단계에서 정량 지표 값의 오류를 야기 할 수 있으므로 항상 주의 해야 한다. 이에 본 연구는 심근관류 SPECT 검사의 재구성 방법에 따른 좌심실의 정량적 지표 값을 심장 초음파와 서로 비교 함으로써 그 차이의 정도를 확인 한다. 2012년 2월부터 9월까지 본원에 내원하여 심근관류 SPECT 및 심장 초음파 검사를 실시한 278명의 환자(남자 90명, 여자 188명, 평균$65.5{\pm}11.1$세)를 심장 초음파의 ESV 30 mL를 기준으로 삼아 그 이하를 작은 용적 심장, 그 이상을 보통 또는 큰 용적심장으로 구분하였다. 각각 여과 후 FBP 및 OSEM의 방법을 적용하여 EDV, ESV 그리고 LVEF를 산출하였으며, 이를 심장 초음파에서 측정된 지표들과 함께 반복측정 분산분석 방법(Repeated Measures ANOVA)으로 분석하였다. 남녀 간의 EDV는 FBP, OSEM 간 유의한 차이가 없었으나 (p=0.053, p=0.098), 심장 초음파와의 비교에서는 유의한 차이를 보였다(p<0.001). ESV의 변화는 특히 작은 용적 심장을 가진 여성에서 FBP, OSEM, 심장 초음파 모두 유의한 차이(p<0.001)를 보였다. 또한 LVEF에서도 보통 용적 심장을 가진 남녀 모두 FBP, OSEM, 심장 초음파 간 유의한 차이는 보이지 않았으나(p=0.375, p=0.969), 작은 용적 심장을 가진 여성에서 모두 유의한 차이(p<0.001)를 보였다. 핵의학 영상 재구성 방법 간 좌심실의 정량적 지표 값의 변화는 보통 용적 심장을 가진 환자에서는 유의한 차이를 발견 할수 없었으나, ESV를 기준으로 30 mL 이하의 작은 용적 심장, 특히 여성에서는 FBP, IR_OSEM, 심장 초음파 간 유사한 차이를 확인 할 수 있었다. 하지만 이러한 차이는 분석에 사용된 3종류의 모든 감마 카메라에서 OSEM 적용 시FBP 보다 평균적으로 심장 초음파와의 오차가 적은 LVEF값이 산출됨을 확인 할 수 있었다.

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다양한 다분류 SVM을 적용한 기업채권평가 (Corporate Bond Rating Using Various Multiclass Support Vector Machines)

  • 안현철;김경재
    • Asia pacific journal of information systems
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    • 제19권2호
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    • pp.157-178
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    • 2009
  • Corporate credit rating is a very important factor in the market for corporate debt. Information concerning corporate operations is often disseminated to market participants through the changes in credit ratings that are published by professional rating agencies, such as Standard and Poor's (S&P) and Moody's Investor Service. Since these agencies generally require a large fee for the service, and the periodically provided ratings sometimes do not reflect the default risk of the company at the time, it may be advantageous for bond-market participants to be able to classify credit ratings before the agencies actually publish them. As a result, it is very important for companies (especially, financial companies) to develop a proper model of credit rating. From a technical perspective, the credit rating constitutes a typical, multiclass, classification problem because rating agencies generally have ten or more categories of ratings. For example, S&P's ratings range from AAA for the highest-quality bonds to D for the lowest-quality bonds. The professional rating agencies emphasize the importance of analysts' subjective judgments in the determination of credit ratings. However, in practice, a mathematical model that uses the financial variables of companies plays an important role in determining credit ratings, since it is convenient to apply and cost efficient. These financial variables include the ratios that represent a company's leverage status, liquidity status, and profitability status. Several statistical and artificial intelligence (AI) techniques have been applied as tools for predicting credit ratings. Among them, artificial neural networks are most prevalent in the area of finance because of their broad applicability to many business problems and their preeminent ability to adapt. However, artificial neural networks also have many defects, including the difficulty in determining the values of the control parameters and the number of processing elements in the layer as well as the risk of over-fitting. Of late, because of their robustness and high accuracy, support vector machines (SVMs) have become popular as a solution for problems with generating accurate prediction. An SVM's solution may be globally optimal because SVMs seek to minimize structural risk. On the other hand, artificial neural network models may tend to find locally optimal solutions because they seek to minimize empirical risk. In addition, no parameters need to be tuned in SVMs, barring the upper bound for non-separable cases in linear SVMs. Since SVMs were originally devised for binary classification, however they are not intrinsically geared for multiclass classifications as in credit ratings. Thus, researchers have tried to extend the original SVM to multiclass classification. Hitherto, a variety of techniques to extend standard SVMs to multiclass SVMs (MSVMs) has been proposed in the literature Only a few types of MSVM are, however, tested using prior studies that apply MSVMs to credit ratings studies. In this study, we examined six different techniques of MSVMs: (1) One-Against-One, (2) One-Against-AIL (3) DAGSVM, (4) ECOC, (5) Method of Weston and Watkins, and (6) Method of Crammer and Singer. In addition, we examined the prediction accuracy of some modified version of conventional MSVM techniques. To find the most appropriate technique of MSVMs for corporate bond rating, we applied all the techniques of MSVMs to a real-world case of credit rating in Korea. The best application is in corporate bond rating, which is the most frequently studied area of credit rating for specific debt issues or other financial obligations. For our study the research data were collected from National Information and Credit Evaluation, Inc., a major bond-rating company in Korea. The data set is comprised of the bond-ratings for the year 2002 and various financial variables for 1,295 companies from the manufacturing industry in Korea. We compared the results of these techniques with one another, and with those of traditional methods for credit ratings, such as multiple discriminant analysis (MDA), multinomial logistic regression (MLOGIT), and artificial neural networks (ANNs). As a result, we found that DAGSVM with an ordered list was the best approach for the prediction of bond rating. In addition, we found that the modified version of ECOC approach can yield higher prediction accuracy for the cases showing clear patterns.