ANALYSIS OF FACTORS AFFECTING INTENTION TO USE INFORMATION SYSTEMS ON THE ACQUISITION AND CLASSIFICATION OF CERVICAL CANCER IMAGE

research
  • 15 Sep
  • 2020

ANALYSIS OF FACTORS AFFECTING INTENTION TO USE INFORMATION SYSTEMS ON THE ACQUISITION AND CLASSIFICATION OF CERVICAL CANCER IMAGE

The use of ICT for health is known as e-health. Information System on the Acquisition and Classification of Cervical Cancer Image (ISAC) is one of e-health built on the basis of research in the field of cervical cancer image. Before applying ISAC, we need to analyze to see the readiness of user acceptance and adaptation so that it can be implemented optimally. This study aims to prove the main factors affecting the user intention to use SIPK on the basis of a combined model of the theory of planned behavior and the technology acceptance. The model testing in this research was done by using SPSS software. The result of this research obtained the factors influencing user acceptance in using ISAC as well as recommendation as an effort for improvement. These factors are perceived service availability which significantly influenced perceived ease of use, perceived ease of use which significantly influenced perceived usefulness, perceived ease of use that significantly influenced attitude toward using technology, perceived usefulness that significantly influenced attitude toward using technology, and attitude toward using technology significantly influencing behavioral intention to use.

Unduhan

 

REFERENSI

 J. Grigsby and P. L. Barton, “Telecommunications Technology , Health Services , and Technology Assessment,” pp. 7–10, 2002. [2] O. Mirabella, A. Raucea, and R. Journal of Theoretical and Applied Information Technology 15th December 2018. Vol.96. No 23 © 2005 – ongoing JATIT & LLS ISSN: 1992-8645 www.jatit.org E-ISSN: 1817-3195 7721 Barbagallo, “eHealt Distributed Software Environment for the evaluation of body movements,” 2014. [3] I. Chiuchisan, D.-G. Balan, O. Geman, I. Chiuchisan, and I. Gordin, “A security approach for health care information systems,” 2017 E-Health Bioeng. Conf., pp. 721–724, 2017. [4] H. Costin et al., “Complex Telemonitoring of Patients and Elderly People for Telemedical and Homecare Services 2 Problem Formulation,” pp. 183–187, 2008. [5] J. Prior, “Factors influencing residents’ acceptance (support) of remediation technologies,” Sci. Total Environ., vol. 624, pp. 1369–1386, 2018. [6] N. Acar and B. Çizmeci, “Factors Influencing Customer’s Choice of Technology Retailers: An Application in Kayseri (Turkey),” Procedia - Soc. Behav. Sci., vol. 207, pp. 206–213, 2015. [7] C. Lisha, C. F. Goh, S. Yifan, and A. Rasli, “Integrating guanxi into technology acceptance: An empirical investigation of WeChat,” Telemat. Informatics, vol. 34, no. 7, pp. 1125–1142, 2017. [8] E. Sezgin and S. Özkan-Yıldırım, “A cross-sectional investigation of acceptance of health information technology: A nationwide survey of community pharmacists in Turkey,” Res. Soc. Adm. Pharm., vol. 12, no. 6, pp. 949–965, 2016. [9] P. Acheampong, L. Zhiwen, H. A. Antwi, A. Akai, A. Otoo, and W. G. Mensah, “Hybridizing an Extended Technology Readiness Index with Technology Acceptance Model ( TAM ) to Predict EPayment Adoption in Ghana,” Am. J. Multidiscip. Res., vol. 5, no. 2, pp. 172– 184, 2017. [10] A. N. Hidayanto, L. S. Hidayat, P. I. Sandhyaduhita and P. W. Handayani, “Examining the relationship of payment system characteristics and behavioural intention in e-payment adoption: a case of Indonesia,” Int. J. Business Information Systems, Vol. 19, No. 1, pp.58-86, 2015 [11] Q. Zhao, C. Der Chen, and J. L. Wang, “The effects of psychological ownership and TAM on social media loyalty: An integrated model,” Telemat. Informatics, vol. 33, no. 4, pp. 959–972, 2016 [12] A. N. Hidayanto, A. Herbowo, N. F. A. Budi, and Y. G. Sucahyo, “Determinant of customer trust on E-commerce and its impact to purchase and word of mouth intention: A case of Indonesia,” J. Comput. Sci., vol. 10, no. 12, pp. 2395– 2407, 2014. [13] D. Riana, “Sistem Informasi Perolehan dan Klasifikasi Citra Kanker Serviks,” sipk.dwiza.web.id. [Online]. Available: sipk.dwiza.web.id. [Accessed: 04-Feb2018]. [14] M. Neghina, C. Rasche, M. Ciuc, A. Sultana, and C. Tiganesteanu, “Automatic detection of cervical cells in Pap-smear images using polar transform and kmeans segmentation,” pp. 0–5, 2016. [15] D. Riana, A. N. Hidayanto, and U. Indonesia, “Integration of Bagging and Greedy Forward Selection on Image Pap Smear Classification using Naïve Bayes,” 2001. [16] O. Dele-ajayi, R. Strachan, J. Sanderson, and A. Pickard, “A Modified TAM for Predicting Acceptance of Digital Educational Games by Teachers,” no. April, pp. 961–968, 2017. [17] K. Patil, “Retail Adoption of Internet of Things : Applying TAM model,” pp. 404– 409, 2016. [18] W. Chaiyasoonthorn and W. Suksangiam, “The acceptance of social network: The role of status seeking on TAM,” 2017. [19] E. Huang, N. C. Yeh, and I. Hung, “Using Decomposed Theory of Planned Behavior to Explain Virtual Currency Use Intention,” 2011. [20] X. Li, “Factors Affecting Privacy Disclosure on social Network Sites : An Integrated Model,” pp. 320–324, 2010. [21] A. M. Sari, A. N. Hidayanto, B. Purwandari, P. Utari, and Solikin, “Analysis of internal and external factors influencing user’s knowledge sharing behavior on TMC polda metro Jaya’s Twitter using theory of planned behavior,” 2018. [22] Y.-C. Chin, “Consumer Acceptance of Online Complaint Forms: An Integration of TPB, TAM and Values Perspective,” Bus. Econ. Res., vol. 6, no. 2, p. 265, 2016. [23] V. Venkatesh and F. D. Davis, “User acceptance of information technology: A Journal of Theoretical and Applied Information Technology 15th December 2018. Vol.96. No 23 © 2005 – ongoing JATIT & LLS ISSN: 1992-8645 www.jatit.org E-ISSN: 1817-3195 7722 unified model,” vol. Dissertati, no. January 2003, p. 1, 1998. [24] F. D. Davis and B. F. D. Davis, “Perceived Usefulness , Perceived Ease of Use , and User Acceptance of lnformation Technology,” vol. 13, no. 3, pp. 319–340, 1989. [25] J. C. S. Prieto, S. O. Migueláñez, and F. J. García-Peñalvo, “Subjective Norm and Behavioral Intention to Use Mobile Technologies A descriptive study on the attitudes of future Primary Education teachers,” 2016 Int. Symp. Comput. Educ. SIIE 2016 Learn. Anal. Technol., pp. 0–5, 2016. [26] E. Widyapraba et al., “Analisis FaktorFaktor Yang Mempengaruhi Niat Pengguna Untuk Menggunakan Aplikasi Daftar Online Rumah Sakit ( Studi Kasus : RSUD Gambiran Kediri ),” 2016. [27] W. GUO-BAO, “Research on The Measurement of Knowledge Sharing in Chinese Cultural Context : Scale Development and Validity Test,” NO. 2004,2013. [28] S.-J. Hong and K. Y. Tam, “Understanding the Adoption of Multipurpose Information Appliances: The Case of Mobile Data Services,” Inf. Syst. Res., pp. 162–179, 2006. [29] Yang, S., Lu, Y., Gupta, S., Cao, Y. and Zhang, R. "Mobile payment services adoption across time: an empirical study of the effects of behavioral beliefs, social influences, and personal traits," Computers in Human Behavior, Vol. 28, No. 1, pp.129–142, 2011.