Continuous cost growth in the healthcare sector is one of the most critical challenges. Several scientists are trying to provide solutions that will include quality of care and cost reduction. First, computerization and then technological digitization has made it possible to store an increasing amount of data and leverage it to improve quality and reduce costs. Although the topic is relevant, no article has expressed how data quality resulting from healthcare innovation can be crucial for lowering healthcare costs. Using the bibliometric approach and benefiting from Zupic and Cater methodological paper, the analysis investigates 159 peer-reviewed English papers. Additionally, the Bibliometrix R package is used in the data analysis part. The results confirm a multidisciplinary literature stream with a few unrelated process variables. We provide evidence of authors, journals, keywords, geographic areas of reference and a framework that links the two research streams. Finally, we argue that a structured data quality process helps value healthcare data adequately and reduces costs. Moreover, quality is fundamental before applying advanced data analytics through big data analytics, IoT and artificial intelligence applications.
Data quality for health sector innovation and accounting management: a twenty-year bibliometric analysis
Silvana Secinaro;Valerio Brescia;Davide Calandra;Paolo Biancone
2021-01-01
Abstract
Continuous cost growth in the healthcare sector is one of the most critical challenges. Several scientists are trying to provide solutions that will include quality of care and cost reduction. First, computerization and then technological digitization has made it possible to store an increasing amount of data and leverage it to improve quality and reduce costs. Although the topic is relevant, no article has expressed how data quality resulting from healthcare innovation can be crucial for lowering healthcare costs. Using the bibliometric approach and benefiting from Zupic and Cater methodological paper, the analysis investigates 159 peer-reviewed English papers. Additionally, the Bibliometrix R package is used in the data analysis part. The results confirm a multidisciplinary literature stream with a few unrelated process variables. We provide evidence of authors, journals, keywords, geographic areas of reference and a framework that links the two research streams. Finally, we argue that a structured data quality process helps value healthcare data adequately and reduces costs. Moreover, quality is fundamental before applying advanced data analytics through big data analytics, IoT and artificial intelligence applications.File | Dimensione | Formato | |
---|---|---|---|
2079-9685-1-PB.pdf
Accesso aperto
Tipo di file:
PDF EDITORIALE
Dimensione
1.97 MB
Formato
Adobe PDF
|
1.97 MB | Adobe PDF | Visualizza/Apri |
I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.