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Preliminary development of a prediction model for daily stroke occurrences based on meteorological and calendar information using deep learning framework (Prediction One; Sony Network Communications Inc., Japan)

BACKGROUND: Chronologically meteorological and calendar factors were risks of stroke occurrence. However, the prediction of stroke occurrences is difficult depending on only meteorological and calendar factors. We tried to make prediction models for stroke occurrences using deep learning (DL) softwa...

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Autores principales: Katsuki, Masahito, Narita, Norio, Ishida, Naoya, Watanabe, Ohmi, Cai, Siqi, Ozaki, Dan, Sato, Yoshimichi, Kato, Yuya, Jia, Wenting, Nishizawa, Taketo, Kochi, Ryuzaburo, Sato, Kanako, Tominaga, Teiji
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Scientific Scholar 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7881509/
https://www.ncbi.nlm.nih.gov/pubmed/33598347
http://dx.doi.org/10.25259/SNI_774_2020
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author Katsuki, Masahito
Narita, Norio
Ishida, Naoya
Watanabe, Ohmi
Cai, Siqi
Ozaki, Dan
Sato, Yoshimichi
Kato, Yuya
Jia, Wenting
Nishizawa, Taketo
Kochi, Ryuzaburo
Sato, Kanako
Tominaga, Teiji
author_facet Katsuki, Masahito
Narita, Norio
Ishida, Naoya
Watanabe, Ohmi
Cai, Siqi
Ozaki, Dan
Sato, Yoshimichi
Kato, Yuya
Jia, Wenting
Nishizawa, Taketo
Kochi, Ryuzaburo
Sato, Kanako
Tominaga, Teiji
author_sort Katsuki, Masahito
collection PubMed
description BACKGROUND: Chronologically meteorological and calendar factors were risks of stroke occurrence. However, the prediction of stroke occurrences is difficult depending on only meteorological and calendar factors. We tried to make prediction models for stroke occurrences using deep learning (DL) software, Prediction One (Sony Network Communications Inc., Tokyo, Japan), with those variables. METHODS: We retrospectively investigated the daily stroke occurrences between 2017 and 2019. We used Prediction One software to make the prediction models for daily stroke occurrences (present or absent) using 221 chronologically meteorological and calendar factors. We made a prediction models from the 3-year dataset and evaluated their accuracies using the internal cross-validation. Areas under the curves (AUCs) of receiver operating characteristic curves were used as accuracies. RESULTS: The 371 cerebral infarction (CI), 184 intracerebral hemorrhage (ICH), and 53 subarachnoid hemorrhage patients were included in the study. The AUCs of the several DL-based prediction models for all stroke occurrences were 0.532–0.757. Those for CI were 0.600–0.782. Those for ICH were 0.714–0.988. CONCLUSION: Our preliminary results suggested a probability of the DL-based prediction models for stroke occurrence only by meteorological and calendar factors. In the future, by synchronizing a variety of medical information among the electronic medical records and personal smartphones as well as integrating the physical activities or meteorological conditions in real time, the prediction of stroke occurrence could be performed with high accuracy, to save medical resources, to have patients care for themselves, and to perform efficient medicine.
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spelling pubmed-78815092021-02-16 Preliminary development of a prediction model for daily stroke occurrences based on meteorological and calendar information using deep learning framework (Prediction One; Sony Network Communications Inc., Japan) Katsuki, Masahito Narita, Norio Ishida, Naoya Watanabe, Ohmi Cai, Siqi Ozaki, Dan Sato, Yoshimichi Kato, Yuya Jia, Wenting Nishizawa, Taketo Kochi, Ryuzaburo Sato, Kanako Tominaga, Teiji Surg Neurol Int Original Article BACKGROUND: Chronologically meteorological and calendar factors were risks of stroke occurrence. However, the prediction of stroke occurrences is difficult depending on only meteorological and calendar factors. We tried to make prediction models for stroke occurrences using deep learning (DL) software, Prediction One (Sony Network Communications Inc., Tokyo, Japan), with those variables. METHODS: We retrospectively investigated the daily stroke occurrences between 2017 and 2019. We used Prediction One software to make the prediction models for daily stroke occurrences (present or absent) using 221 chronologically meteorological and calendar factors. We made a prediction models from the 3-year dataset and evaluated their accuracies using the internal cross-validation. Areas under the curves (AUCs) of receiver operating characteristic curves were used as accuracies. RESULTS: The 371 cerebral infarction (CI), 184 intracerebral hemorrhage (ICH), and 53 subarachnoid hemorrhage patients were included in the study. The AUCs of the several DL-based prediction models for all stroke occurrences were 0.532–0.757. Those for CI were 0.600–0.782. Those for ICH were 0.714–0.988. CONCLUSION: Our preliminary results suggested a probability of the DL-based prediction models for stroke occurrence only by meteorological and calendar factors. In the future, by synchronizing a variety of medical information among the electronic medical records and personal smartphones as well as integrating the physical activities or meteorological conditions in real time, the prediction of stroke occurrence could be performed with high accuracy, to save medical resources, to have patients care for themselves, and to perform efficient medicine. Scientific Scholar 2021-01-28 /pmc/articles/PMC7881509/ /pubmed/33598347 http://dx.doi.org/10.25259/SNI_774_2020 Text en Copyright: © 2020 Surgical Neurology International http://creativecommons.org/licenses/by-nc-sa/4.0 This is an open-access article distributed under the terms of the Creative Commons Attribution-Non Commercial-Share Alike 4.0 License, which allows others to remix, tweak, and build upon the work non-commercially, as long as the author is credited and the new creations are licensed under the identical terms.
spellingShingle Original Article
Katsuki, Masahito
Narita, Norio
Ishida, Naoya
Watanabe, Ohmi
Cai, Siqi
Ozaki, Dan
Sato, Yoshimichi
Kato, Yuya
Jia, Wenting
Nishizawa, Taketo
Kochi, Ryuzaburo
Sato, Kanako
Tominaga, Teiji
Preliminary development of a prediction model for daily stroke occurrences based on meteorological and calendar information using deep learning framework (Prediction One; Sony Network Communications Inc., Japan)
title Preliminary development of a prediction model for daily stroke occurrences based on meteorological and calendar information using deep learning framework (Prediction One; Sony Network Communications Inc., Japan)
title_full Preliminary development of a prediction model for daily stroke occurrences based on meteorological and calendar information using deep learning framework (Prediction One; Sony Network Communications Inc., Japan)
title_fullStr Preliminary development of a prediction model for daily stroke occurrences based on meteorological and calendar information using deep learning framework (Prediction One; Sony Network Communications Inc., Japan)
title_full_unstemmed Preliminary development of a prediction model for daily stroke occurrences based on meteorological and calendar information using deep learning framework (Prediction One; Sony Network Communications Inc., Japan)
title_short Preliminary development of a prediction model for daily stroke occurrences based on meteorological and calendar information using deep learning framework (Prediction One; Sony Network Communications Inc., Japan)
title_sort preliminary development of a prediction model for daily stroke occurrences based on meteorological and calendar information using deep learning framework (prediction one; sony network communications inc., japan)
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7881509/
https://www.ncbi.nlm.nih.gov/pubmed/33598347
http://dx.doi.org/10.25259/SNI_774_2020
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