ASSESSING THE IMPACT OF KNOWLEDGE-SEEKING PRACTICES, COLLABORATION, AND AI TOOLS ON TICKET ESCALATION IN HEALTHCARE IT SUPPORT: A LOGISTIC REGRESSION ANALYSIS

dc.contributor.authorLahus, Valeriia
dc.date.accessioned2026-07-06T08:10:05Z
dc.date.available2026-07-06T08:10:05Z
dc.date.issued2026-05
dc.description.abstractThis study investigates the factors influencing the escalation of support tickets to programmers in a healthcare IT environment. It focuses on three factors: knowledge-seeking practices (use of requirements and documentation), cross-team consultation, and the use of an artificial intelligence (AI) chatbot. Besides escalation frequency, the study examines valid escalation, defined as cases where escalation is justified and confirmed as a system defect, deficiency, or enhancement. A quantitative research approach was applied using logistic regression on a dataset of 150 support tickets to evaluate the main and interaction effects of these factors on escalation outcomes. The results show that knowledge-seeking practices have a statistically significant impact on both escalation and valid escalation. The use of requirements increases the likelihood of escalation while improving the accuracy of escalation decisions. Cross-team consultation and AI chatbot use do not have statistically significant independent effects. However, the interaction between requirements and AI chatbot is significant, indicating that AI can reduce escalation when combined with structured documentation. The findings suggest that effective technical support depends not only on reducing escalations but also on improving their accuracy and justification. The study recommends strengthening knowledge management, improving documentation quality and accessibility, and integrating AI tools with system requirements to optimize support operations in healthcare IT systems.
dc.identifier.citationLahus, Valeriia. (2026). ASSESSING THE IMPACT OF KNOWLEDGE-SEEKING PRACTICES, COLLABORATION, AND AI TOOLS ON TICKET ESCALATION IN HEALTHCARE IT SUPPORT: A LOGISTIC REGRESSION ANALYSIS . Kyiv: American University Kyiv. URI: https://er.auk.edu.ua/handle/234907866/195en
dc.identifier.urihttps://er.auk.edu.ua/handle/234907866/195
dc.language.isoen_US
dc.publisherManuscript
dc.subjecthealthcare IT support
dc.subjectsupport ticket resolution
dc.subjectknowledge-seeking practices
dc.subjectcross-team collaboration
dc.subjectAI chatbot
dc.subjectartificial intelligence
dc.subjectlogistic regression
dc.subjecteffective support
dc.titleASSESSING THE IMPACT OF KNOWLEDGE-SEEKING PRACTICES, COLLABORATION, AND AI TOOLS ON TICKET ESCALATION IN HEALTHCARE IT SUPPORT: A LOGISTIC REGRESSION ANALYSIS
dc.title.alternativeОЦІНЮВАННЯ ВПЛИВУ ПРАКТИК ПОШУКУ ЗНАНЬ, СПІВПРАЦІ ТА ІНСТРУМЕНТІВ ШТУЧНОГО ІНТЕЛЕКТУ НА ПРОЦЕС ЕСКАЛАЦІЇ ЗВЕРНЕНЬ У СФЕРІ ІТ-ПІДТРИМКИ ОХОРОНИ ЗДОРОВ’Я: ЛОГІСТИЧНО-РЕГРЕСІЙНИЙ АНАЛІЗ
dc.typeThesis

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