2023
DOI: 10.1016/j.compbiomed.2022.106517
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Intelligent speech technologies for transcription, disease diagnosis, and medical equipment interactive control in smart hospitals: A review

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Cited by 27 publications
(8 citation statements)
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“…The application of time-frequency and time-space features for LSTM learning was shown to be of high and better performance in classifying physiological signals than several other classification models [19]. In this study, the experimental results illustrated the superior performance of the LSTM that learned on time-frequency and time-space features of Medical voice analysis systems utilize hardware, software, and human-computer interaction to achieve smart hospital facilities [33]. Technical elaborations on this study can contribute to endeavors concerning intelligent technology for the diagnosis of pathology in human acoustics and its potential applications in smart healthcare.…”
Section: Discussionmentioning
confidence: 70%
See 1 more Smart Citation
“…The application of time-frequency and time-space features for LSTM learning was shown to be of high and better performance in classifying physiological signals than several other classification models [19]. In this study, the experimental results illustrated the superior performance of the LSTM that learned on time-frequency and time-space features of Medical voice analysis systems utilize hardware, software, and human-computer interaction to achieve smart hospital facilities [33]. Technical elaborations on this study can contribute to endeavors concerning intelligent technology for the diagnosis of pathology in human acoustics and its potential applications in smart healthcare.…”
Section: Discussionmentioning
confidence: 70%
“…Medical voice analysis systems utilize hardware, software, and human-computer interaction to achieve smart hospital facilities [33]. Technical elaborations on this study can contribute to endeavors concerning intelligent technology for the diagnosis of pathology in human acoustics and its potential applications in smart healthcare.…”
Section: Discussionmentioning
confidence: 99%
“…Using influencing factors revealed in this study, pilot testing of a developed VAT in a controlled setting, such as a simulation center, could be used to further test the benefits and drawbacks of this technology for dentistry. Building on this study’s findings, we could include the acceptance of other artificial AI systems by practitioners in future studies [ 17 , 60 , 61 ]. In addition, we plan to investigate the acceptance of both VAT and AI by patients and caregivers.…”
Section: Discussionmentioning
confidence: 99%
“…Dental speech applications are currently available for EHRs, however there are limitations [ 8 ]. Most of these software programs currently utilize two distinct types of voice input: command-driven and dictation [ 16 , 17 ]. The command-driven software allows users to navigate the EHR and enter information [ 12 ]; however, this mode of input requires memorization of specific words and prompts to navigate and enter information into the EHR, limiting its overall usefulness [ 11 , 12 ].…”
Section: Introductionmentioning
confidence: 99%
“…В настоящее время исследователи отмечают ряд проблем, возникающих при внедрении технологий ГВ: стоимость на этапе первоначального внедрения; затраты времени, связанных с обучением персонала, стоимость оборудования [7]. Положительными аспектами внедрения ГВ в рутинной практике являются: положительная оценка медицинских работников и рост их удовлетворенности при работе с ЭМК; уменьшение времени, затрачиваемого на заполнение медицинской документации.…”
Section: перечень сокращений и обозначенийunclassified