• 제목/요약/키워드: way point tracking

검색결과 62건 처리시간 0.021초

PET/CT 검사에서 18F-FDG 투여 후 음악 청취 여부에 따른 SUV변화와 환자의 만족도에 관한 고찰 (Consideration on the Satisfaction of Patients and SUV Variation According to Whether or not to Listen to Music after 18F-FDG Injection)

  • 박수영;윤선희;김화산;김현기
    • 핵의학기술
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    • 제17권2호
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    • pp.37-43
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    • 2013
  • PET/CT검사는 목적장기 및 조직에 집적된 방사성의약품의 표준섭취계수(SUV, standardized uptake value)를 객관적 지표로 이용하여, 인체 내 각 장기의 생리화학반응에 대한 정성 및 정량분석이 가능하다. 본 연구는 PET/CT검사를 하는 환자에게 $^{18}F-FDG$ (fluororodeoxyglucose) 투여 후 안정 상태 유지 중 음악 청취 여부에 따른 SUV의 변화를 분석하고, 음악 청취가 안정을 취하는 환자의 주관적 만족도에 어떠한 영향을 미치는지 평가하였다. 2011년 4월부터 2013년 2월까지 서울성모병원과 부천성모 병원을 내원한 원발성 암 환자 중 $^{18}F-FDG$ PET/CT를 시행 하고, 추적검사를 통해 진료 받는 108명(평균연령 $55.61{\pm}12.41$세, 남자 48명, 여자 60명)을 대상으로 하였다. $^{18}F-FDG$ 투여 후, 1시간 안정 시 환자의 음악 청취 여부에 따라-최초 검사 시 음악 청취 없이 안정을 유지(A:최초 검사), 추적 검사 시 음악 청취를 하면서 안정을 유지(B: 추적 검사)-두 가지 그룹으로 분류하였다. 검사 종료 후 간 우엽의 중앙과 뇌의 3곳(전두엽, 후두엽, 측두엽)에 관심영역을 설정하여 SUV를 측정 후 SPSS software version 12.0K for window (SPSS Inc., Chicago, IL)를 이용해 paired t-test를 실시하여 통계적 유의성을 검증하였다(P>0.05). 또한 음악 청취 여부에 따른 고객만족도를 평가하기 위하여 1:1 설문지 조사법을 시행하였고 설문지는 Likert 5점 척도를 이용해 작성하여 단순빈도, 백분율, 평균값, 표준편차를 분석하였다. 음악 청취 여부에 따른 SUV의 변화는 관심영역 4곳 모두 유의하지 않은(전두엽 P=0.611, 후두엽 P=0.499, 측두엽 P=0.717, 간 P=0.334: P>0.05) 것으로 나타났으며, 고객만족도는 실험 A는 3.95점, 실험 B는 4.37점(5점 만점 기준)으로 실험 A에 비해 실험 B의 경우 0.42점 높게 나타나 실험 B에서 환자들이 더욱 만족하는 것으로 나타났다. $^{18}F-FDG$를 이용한 PET/CT 검사 시 방사성의약품 투여 후 음악청취는 SUV에 영향을 미치지 않고 심리적으로 편안 한 상태를 주어 환자의 만족도를 향상 시킬 수 있는 것으로 사료된다.

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U-마켓에서의 사용자 정보보호를 위한 매장 추천방법 (A Store Recommendation Procedure in Ubiquitous Market for User Privacy)

  • 김재경;채경희;구자철
    • Asia pacific journal of information systems
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    • 제18권3호
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    • pp.123-145
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    • 2008
  • Recently, as the information communication technology develops, the discussion regarding the ubiquitous environment is occurring in diverse perspectives. Ubiquitous environment is an environment that could transfer data through networks regardless of the physical space, virtual space, time or location. In order to realize the ubiquitous environment, the Pervasive Sensing technology that enables the recognition of users' data without the border between physical and virtual space is required. In addition, the latest and diversified technologies such as Context-Awareness technology are necessary to construct the context around the user by sharing the data accessed through the Pervasive Sensing technology and linkage technology that is to prevent information loss through the wired, wireless networking and database. Especially, Pervasive Sensing technology is taken as an essential technology that enables user oriented services by recognizing the needs of the users even before the users inquire. There are lots of characteristics of ubiquitous environment through the technologies mentioned above such as ubiquity, abundance of data, mutuality, high information density, individualization and customization. Among them, information density directs the accessible amount and quality of the information and it is stored in bulk with ensured quality through Pervasive Sensing technology. Using this, in the companies, the personalized contents(or information) providing became possible for a target customer. Most of all, there are an increasing number of researches with respect to recommender systems that provide what customers need even when the customers do not explicitly ask something for their needs. Recommender systems are well renowned for its affirmative effect that enlarges the selling opportunities and reduces the searching cost of customers since it finds and provides information according to the customers' traits and preference in advance, in a commerce environment. Recommender systems have proved its usability through several methodologies and experiments conducted upon many different fields from the mid-1990s. Most of the researches related with the recommender systems until now take the products or information of internet or mobile context as its object, but there is not enough research concerned with recommending adequate store to customers in a ubiquitous environment. It is possible to track customers' behaviors in a ubiquitous environment, the same way it is implemented in an online market space even when customers are purchasing in an offline marketplace. Unlike existing internet space, in ubiquitous environment, the interest toward the stores is increasing that provides information according to the traffic line of the customers. In other words, the same product can be purchased in several different stores and the preferred store can be different from the customers by personal preference such as traffic line between stores, location, atmosphere, quality, and price. Krulwich(1997) has developed Lifestyle Finder which recommends a product and a store by using the demographical information and purchasing information generated in the internet commerce. Also, Fano(1998) has created a Shopper's Eye which is an information proving system. The information regarding the closest store from the customers' present location is shown when the customer has sent a to-buy list, Sadeh(2003) developed MyCampus that recommends appropriate information and a store in accordance with the schedule saved in a customers' mobile. Moreover, Keegan and O'Hare(2004) came up with EasiShop that provides the suitable tore information including price, after service, and accessibility after analyzing the to-buy list and the current location of customers. However, Krulwich(1997) does not indicate the characteristics of physical space based on the online commerce context and Keegan and O'Hare(2004) only provides information about store related to a product, while Fano(1998) does not fully consider the relationship between the preference toward the stores and the store itself. The most recent research by Sedah(2003), experimented on campus by suggesting recommender systems that reflect situation and preference information besides the characteristics of the physical space. Yet, there is a potential problem since the researches are based on location and preference information of customers which is connected to the invasion of privacy. The primary beginning point of controversy is an invasion of privacy and individual information in a ubiquitous environment according to researches conducted by Al-Muhtadi(2002), Beresford and Stajano(2003), and Ren(2006). Additionally, individuals want to be left anonymous to protect their own personal information, mentioned in Srivastava(2000). Therefore, in this paper, we suggest a methodology to recommend stores in U-market on the basis of ubiquitous environment not using personal information in order to protect individual information and privacy. The main idea behind our suggested methodology is based on Feature Matrices model (FM model, Shahabi and Banaei-Kashani, 2003) that uses clusters of customers' similar transaction data, which is similar to the Collaborative Filtering. However unlike Collaborative Filtering, this methodology overcomes the problems of personal information and privacy since it is not aware of the customer, exactly who they are, The methodology is compared with single trait model(vector model) such as visitor logs, while looking at the actual improvements of the recommendation when the context information is used. It is not easy to find real U-market data, so we experimented with factual data from a real department store with context information. The recommendation procedure of U-market proposed in this paper is divided into four major phases. First phase is collecting and preprocessing data for analysis of shopping patterns of customers. The traits of shopping patterns are expressed as feature matrices of N dimension. On second phase, the similar shopping patterns are grouped into clusters and the representative pattern of each cluster is derived. The distance between shopping patterns is calculated by Projected Pure Euclidean Distance (Shahabi and Banaei-Kashani, 2003). Third phase finds a representative pattern that is similar to a target customer, and at the same time, the shopping information of the customer is traced and saved dynamically. Fourth, the next store is recommended based on the physical distance between stores of representative patterns and the present location of target customer. In this research, we have evaluated the accuracy of recommendation method based on a factual data derived from a department store. There are technological difficulties of tracking on a real-time basis so we extracted purchasing related information and we added on context information on each transaction. As a result, recommendation based on FM model that applies purchasing and context information is more stable and accurate compared to that of vector model. Additionally, we could find more precise recommendation result as more shopping information is accumulated. Realistically, because of the limitation of ubiquitous environment realization, we were not able to reflect on all different kinds of context but more explicit analysis is expected to be attainable in the future after practical system is embodied.