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Featured researches published by Kai-Ping Hsu.


international conference on e-health networking, applications and services | 2006

HL7 middleware framework for healthcare information system

Li-Fan Ko; Jen-Chiun Lin; Chi-Huang Chen; Jie-Sheng Chang; Faipei Lai; Kai-Ping Hsu; Tzu-Hsiang Yang; Po-Hsun Cheng; Chia-Chang Wen; Jun-Lian Chen; Siao-Lin Hsieh

In this paper, a new middleware framework developed for the Health Information System (HIS) rightsizing project of National Taiwan University Hospital (NTUH) is proposed. The framework is basically a Service-Oriented Architecture (SOA). Challenges as formatting complex medical information as well as integrating heterogeneous systems in our hospital are addressed by introducing HL7 and Web services standard into our framework. Finally, the performance of a operating HIS based on our framework is analyzed and presented to evaluate the efficiency of our design. Keywords—HL7, Healthcare information system, web services, Service-oriented Architecture


bioinformatics and bioengineering | 2007

Middleware based Inpatient Healthcare Information System

Sung-Huai Hsieh; Sheau-Ling Hsieh; Yung-Ching Weng; Tzu-Hsiang Yang; Feipei Lai; Po-Hsun Cheng; Xiao-Ou Ping; Mao-yu Jan; Jen-Chiun Lin; Chin-Hung Peng; Kuo-Hsuan Huang; Li-Fan Ko; Chi-Huang Chen; Kai-Ping Hsu

The paper presents a multi-tier, integrated, distributed, inpatient healthcare information system based on service oriented architecture (SOA) .NET environment in National Taiwan University Hospital (NTUH). The architecture and outcomes of the newly developed inpatient information system (IIS) platform are discussed in details. We also present mechanisms of integration as well as interoperability among the components and multi-database in IIS via health level seven (HL7) Middleware layer. The preliminary performance of the current operating IIS is evaluated and analyzed to verify the efficiency and effectiveness of the architecture we designed.


computer-based medical systems | 2006

A Scalable Multi-tier Architecture for the National Taiwan University Hospital Information System based on HL7 Standard

Tzu-Hsiang Yang; Po-Hsun Cheng; C.H. Yang; Feipei Lai; C. L. Chen; Hsiu-Hui Lee; Kai-Ping Hsu; Chi-Huang Chen; Ching-Ting Tan; Yeali S. Sun

This article describes the successful experiences of National Taiwan University Hospital (NTUH) in moving from IBM Mainframe to connected networking computer systems. We use multi-tier architecture and HL7 standard to implement our new outpatient hospital information system (HIS). The NTUH HIS is a complex environment with several operating systems, databases, and information systems. We adopt service-oriented architecture (SOA) to reduce the complex relations between systems and solve data consistency problems among databases. We also show that the distributed architecture can provide us stable and reasonable system performances. Our main contribution is proving that the distributed environment with HL7 standard and SOA can sustain in a highly demanding environment


Journal of Medical Systems | 2010

Design and Implementation of Web-Based Mobile Electronic Medication Administration Record

Sung-Huai Hsieh; I-Ching Hou; Po-Hsun Cheng; Ching-Ting Tan; Po-Chao Shen; Kai-Ping Hsu; Sheau-Ling Hsieh; Feipei Lai

Patients’ safety is the most essential, critical issue, however, errors can hardly prevent, especially for human faults. In order to reduce the errors caused by human, we construct Electronic Health Records (EHR) in the Health Information System (HIS) to facilitate patients’ safety and to improve the quality of medical care. During the medical care processing, all the tasks are based upon physicians’ orders. In National Taiwan University Hospital (NTUH), the Electronic Health Record committee proposed a standard of order flows. There are objectives of the standard: first, to enhance medical procedures and enforce hospital policies; secondly, to improve the quality of medical care; third, to collect sufficient, adequate data for EHR in the near future. Among the proposed procedures, NTUH decides to establish a web-based mobile electronic medication administration record (ME-MAR) system. The system, build based on the service-oriented architecture (SOA) as well as embedded the HL7/XML standard, is installed in the Mobile Nursing Carts. It also implement accompany with the advanced techniques like Asynchronous JavaScript and XML (Ajax) or Web services to enhance the system usability. According to researches, it indicates that medication errors are highly proportion to total medical faults. Therefore, we expect the ME-MAR system can reduce medication errors. In addition, we evaluate ME-MAR can assist nurses or healthcare practitioners to administer, manage medication properly. This successful experience of developing the NTUH ME-MAR system can be easily applied to other related system. Meanwhile, the SOA architecture of the system can also be seamless integrated to NTUH or other HIS system.


international conference of the ieee engineering in medicine and biology society | 2010

Bio-signal analysis system design with support vector machines based on cloud computing service architecture

Chia-Ping Shen; Wei-Hsin Chen; Jia-Ming Chen; Kai-Ping Hsu; Jeng-Wei Lin; Ming-Jang Chiu; Chi-Huang Chen; Feipei Lai

Today, many bio-signals such as Electroencephalography (EEG) are recorded in digital format. It is an emerging research area of analyzing these digital bio-signals to extract useful health information in biomedical engineering. In this paper, a bio-signal analyzing cloud computing architecture, called BACCA, is proposed. The system has been designed with the purpose of seamless integration into the National Taiwan University Health Information System. Based on the concept of. NET Service Oriented Architecture, the system integrates heterogeneous platforms, protocols, as well as applications. In this system, we add modern analytic functions such as approximated entropy and adaptive support vector machine (SVM). It is shown that the overall accuracy of EEG bio-signal analysis has increased to nearly 98% for different data sets, including open-source and clinical data sets.


Journal of Medical Systems | 2012

Design Ensemble Machine Learning Model for Breast Cancer Diagnosis

Sheau-Ling Hsieh; Sung-Huai Hsieh; Po-Hsun Cheng; Chi-Huang Chen; Kai-Ping Hsu; I-Shun Lee; Zhenyu Wang; Feipei Lai

In this paper, we classify the breast cancer of medical diagnostic data. Information gain has been adapted for feature selections. Neural fuzzy (NF), k-nearest neighbor (KNN), quadratic classifier (QC), each single model scheme as well as their associated, ensemble ones have been developed for classifications. In addition, a combined ensemble model with these three schemes has been constructed for further validations. The experimental results indicate that the ensemble learning performs better than individual single ones. Moreover, the combined ensemble model illustrates the highest accuracy of classifications for the breast cancer among all models.


international conference of the ieee engineering in medicine and biology society | 2006

An Integrated Healthcare Enterprise Information Portal and Healthcare Information System Framework

Sheau-Ling Hsieh; Feipei Lai; P.H. Cheng; J. L. Chen; H. H. Lee; W. N. Tsai; Yung-Ching Weng; Kai-Ping Hsu; L. F. Ko; T. H. Yang; Chin-Te Chen

The paper presents an integrated, distributed healthcare enterprise information portal (HEIP) and hospital information systems (HIS) framework over wireless/wired infrastructure at National Taiwan University Hospital (NTUH). A single sign-on solution for the hospital customer relationship management (CRM) in HEIP has been established. The outcomes of the newly developed outpatient information systems (OIS) in HIS are discussed. The future HEIP blueprints with CRM oriented features: e-learning, remote consultation and diagnosis (RCD), as well as on-line vaccination services are addressed. Finally, the integrated HEIP and HIS architectures based on the middleware technologies are proposed along with the feasible approaches. The preliminary performance of multi-media, time-based data exchanges over the wireless HEIP side is collected to evaluate the efficiency of the architecture


Journal of Medical Systems | 2010

Newborn Screening Healthcare Information System Based on Service-Oriented Architecture

Sung-Huai Hsieh; Sheau-Ling Hsieh; Yin-Hsiu Chien; Yung-Ching Weng; Kai-Ping Hsu; Chi-Huang Chen; Chien-Ming Tu; Zhenyu Wang; Feipei Lai

In this paper, we established a newborn screening system under the HL7/Web Services frameworks. We rebuilt the NTUH Newborn Screening Laboratory’s original standalone architecture, having various heterogeneous systems operating individually, and restructured it into a Service-Oriented Architecture (SOA), distributed platform for further integrity and enhancements of sample collections, testing, diagnoses, evaluations, treatments or follow-up services, screening database management, as well as collaboration, communication among hospitals; decision supports and improving screening accuracy over the Taiwan neonatal systems are also addressed. In addition, the new system not only integrates the newborn screening procedures among phlebotomy clinics, referral hospitals, as well as the newborn screening center in Taiwan, but also introduces new models of screening procedures for the associated, medical practitioners. Furthermore, it reduces the burden of manual operations, especially the reporting services, those were heavily dependent upon previously. The new system can accelerate the whole procedures effectively and efficiently. It improves the accuracy and the reliability of the screening by ensuring the quality control during the processing as well.


Journal of Medical Internet Research | 2013

Web-based newborn screening system for metabolic diseases: machine learning versus clinicians.

Wei-Hsin Chen; Sheau-Ling Hsieh; Kai-Ping Hsu; Han-Ping Chen; Xing-Yu Su; Yi-Ju Tseng; Yin-Hsiu Chien; Wuh-Liang Hwu; Feipei Lai

Background A hospital information system (HIS) that integrates screening data and interpretation of the data is routinely requested by hospitals and parents. However, the accuracy of disease classification may be low because of the disease characteristics and the analytes used for classification. Objective The objective of this study is to describe a system that enhanced the neonatal screening system of the Newborn Screening Center at the National Taiwan University Hospital. The system was designed and deployed according to a service-oriented architecture (SOA) framework under the Web services .NET environment. The system consists of sample collection, testing, diagnosis, evaluation, treatment, and follow-up services among collaborating hospitals. To improve the accuracy of newborn screening, machine learning and optimal feature selection mechanisms were investigated for screening newborns for inborn errors of metabolism. Methods The framework of the Newborn Screening Hospital Information System (NSHIS) used the embedded Health Level Seven (HL7) standards for data exchanges among heterogeneous platforms integrated by Web services in the C# language. In this study, machine learning classification was used to predict phenylketonuria (PKU), hypermethioninemia, and 3-methylcrotonyl-CoA-carboxylase (3-MCC) deficiency. The classification methods used 347,312 newborn dried blood samples collected at the Center between 2006 and 2011. Of these, 220 newborns had values over the diagnostic cutoffs (positive cases) and 1557 had values that were over the screening cutoffs but did not meet the diagnostic cutoffs (suspected cases). The original 35 analytes and the manifested features were ranked based on F score, then combinations of the top 20 ranked features were selected as input features to support vector machine (SVM) classifiers to obtain optimal feature sets. These feature sets were tested using 5-fold cross-validation and optimal models were generated. The datasets collected in year 2011 were used as predicting cases. Results The feature selection strategies were implemented and the optimal markers for PKU, hypermethioninemia, and 3-MCC deficiency were obtained. The results of the machine learning approach were compared with the cutoff scheme. The number of the false positive cases were reduced from 21 to 2 for PKU, from 30 to 10 for hypermethioninemia, and 209 to 46 for 3-MCC deficiency. Conclusions This SOA Web service–based newborn screening system can accelerate screening procedures effectively and efficiently. An SVM learning methodology for PKU, hypermethioninemia, and 3-MCC deficiency metabolic diseases classification, including optimal feature selection strategies, is presented. By adopting the results of this study, the number of suspected cases could be reduced dramatically.


Journal of Medical Systems | 2010

A Newborn Screening System Based on Service-Oriented Architecture Embedded Support Vector Machine

Kai-Ping Hsu; Sung-Huai Hsieh; Sheau-Ling Hsieh; Po-Hsun Cheng; Yung-Ching Weng; Jang-Hung Wu; Feipei Lai

The clinical symptoms of metabolic disorders are rarely apparent during the neonatal period, and if they are not treated earlier, irreversible damages, such as mental retardation or even death, may occur. Therefore, the practice of newborn screening is essential to prevent permanent disabilities in newborns. In the paper, we design, implement a newborn screening system using Support Vector Machine (SVM) classifications. By evaluating metabolic substances data collected from tandem mass spectrometry (MS/MS), we can interpret and determine whether a newborn has a metabolic disorder. In addition, National Taiwan University Hospital Information System (NTUHIS) has been developed and implemented to integrate heterogeneous platforms, protocols, databases as well as applications. To expedite adapting the diversities, we deploy Service-Oriented Architecture (SOA) concepts to the newborn screening system based on web services. The system can be embedded seamlessly into NTUHIS.

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Feipei Lai

National Taiwan University

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Sheau-Ling Hsieh

National Chiao Tung University

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Chi-Huang Chen

National Taiwan University

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Po-Hsun Cheng

National Kaohsiung Normal University

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Sung-Huai Hsieh

National Taiwan University

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Yung-Ching Weng

National Taiwan University

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Wei-Hsin Chen

National Taiwan University

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Chia-Ping Shen

National Taiwan University

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Tzu-Hsiang Yang

National Taiwan University

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Yin-Hsiu Chien

National Taiwan University

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