1.The Serial Interval of COVID-19 in Korea: 1,567 Pairs of Symptomatic Cases from Contact Tracing
Kwan HONG ; Sujin YUM ; Jeehyun KIM ; Byung Chul CHUN
Journal of Korean Medical Science 2020;35(50):e435-
Although coronavirus disease 2019 (COVID-19) is an ongoing pandemic, the mean serial interval was measured differently across nations. Through the Korean national COVID-19 contact tracing system, we were able to investigate personal contacts in all symptomatic cases in Korea from January 20 to August 3, 2020. The mean serial interval was calculated by the duration between the symptom onset of the infector and infectee, and became shorter after the case definition changed to include not-imported cases in Korea on February 20, 2020. The mean serial interval before and after this fifth case definition was 6.12 and 3.93 days based on the infectors' symptom onset date, respectively, and 4.02 days in total with the median of 3 days. Older age and women lead to longer serial intervals.
2.Predicting the Progression of Mild Cognitive Impairment to Alzheimer’s Dementia Using Recurrent Neural Networks With a Series of Neuropsychological Tests
Chaeyoon PARK ; Gihun JOO ; Minji ROH ; Seunghun SHIN ; Sujin YUM ; Na Young YEO ; Sang Won PARK ; Jae-Won JANG ; Hyeonseung IM ; For the Alzheimer’s DISEASE NEUROIMAGING INITIATIVE
Journal of Clinical Neurology 2024;20(5):478-486
Background:
and Purpose The prevalence of Alzheimer’s dementia (AD) is increasing as populations age, causing immense suffering for patients, families, and communities. Unfortunately, no treatments for this neurodegenerative disease have been established. Predicting AD is therefore becoming more important, because early diagnosis is the best way to prevent its onset and delay its progression.
Methods:
Mild cognitive impairment (MCI) is the stage between normal cognition and AD, with large variations in its progression. The disease can be effectively managed by accurately predicting the probability of MCI progressing to AD over several years. In this study we used the Alzheimer’s Disease Neuroimaging Initiative dataset to predict the progression of MCI to AD over a 3-year period from baseline. We developed and compared various recurrent neural network (RNN) models to determine the predictive effectiveness of four neuropsychological (NP) tests and magnetic resonance imaging (MRI) data at baseline.
Results:
The experimental results confirmed that the Preclinical Alzheimer’s Cognitive Composite score was the most effective of the four NP tests, and that the prediction performance of the NP tests improved over time. Moreover, the gated recurrent unit model exhibited the best performance among the prediction models, with an average area under the receiver operating characteristic curve of 0.916
Conclusions
Timely prediction of progression from MCI to AD can be achieved using a series of NP test results and an RNN, both with and without using the baseline MRI data.
3.Predicting the Progression of Mild Cognitive Impairment to Alzheimer’s Dementia Using Recurrent Neural Networks With a Series of Neuropsychological Tests
Chaeyoon PARK ; Gihun JOO ; Minji ROH ; Seunghun SHIN ; Sujin YUM ; Na Young YEO ; Sang Won PARK ; Jae-Won JANG ; Hyeonseung IM ; For the Alzheimer’s DISEASE NEUROIMAGING INITIATIVE
Journal of Clinical Neurology 2024;20(5):478-486
Background:
and Purpose The prevalence of Alzheimer’s dementia (AD) is increasing as populations age, causing immense suffering for patients, families, and communities. Unfortunately, no treatments for this neurodegenerative disease have been established. Predicting AD is therefore becoming more important, because early diagnosis is the best way to prevent its onset and delay its progression.
Methods:
Mild cognitive impairment (MCI) is the stage between normal cognition and AD, with large variations in its progression. The disease can be effectively managed by accurately predicting the probability of MCI progressing to AD over several years. In this study we used the Alzheimer’s Disease Neuroimaging Initiative dataset to predict the progression of MCI to AD over a 3-year period from baseline. We developed and compared various recurrent neural network (RNN) models to determine the predictive effectiveness of four neuropsychological (NP) tests and magnetic resonance imaging (MRI) data at baseline.
Results:
The experimental results confirmed that the Preclinical Alzheimer’s Cognitive Composite score was the most effective of the four NP tests, and that the prediction performance of the NP tests improved over time. Moreover, the gated recurrent unit model exhibited the best performance among the prediction models, with an average area under the receiver operating characteristic curve of 0.916
Conclusions
Timely prediction of progression from MCI to AD can be achieved using a series of NP test results and an RNN, both with and without using the baseline MRI data.
4.Predicting the Progression of Mild Cognitive Impairment to Alzheimer’s Dementia Using Recurrent Neural Networks With a Series of Neuropsychological Tests
Chaeyoon PARK ; Gihun JOO ; Minji ROH ; Seunghun SHIN ; Sujin YUM ; Na Young YEO ; Sang Won PARK ; Jae-Won JANG ; Hyeonseung IM ; For the Alzheimer’s DISEASE NEUROIMAGING INITIATIVE
Journal of Clinical Neurology 2024;20(5):478-486
Background:
and Purpose The prevalence of Alzheimer’s dementia (AD) is increasing as populations age, causing immense suffering for patients, families, and communities. Unfortunately, no treatments for this neurodegenerative disease have been established. Predicting AD is therefore becoming more important, because early diagnosis is the best way to prevent its onset and delay its progression.
Methods:
Mild cognitive impairment (MCI) is the stage between normal cognition and AD, with large variations in its progression. The disease can be effectively managed by accurately predicting the probability of MCI progressing to AD over several years. In this study we used the Alzheimer’s Disease Neuroimaging Initiative dataset to predict the progression of MCI to AD over a 3-year period from baseline. We developed and compared various recurrent neural network (RNN) models to determine the predictive effectiveness of four neuropsychological (NP) tests and magnetic resonance imaging (MRI) data at baseline.
Results:
The experimental results confirmed that the Preclinical Alzheimer’s Cognitive Composite score was the most effective of the four NP tests, and that the prediction performance of the NP tests improved over time. Moreover, the gated recurrent unit model exhibited the best performance among the prediction models, with an average area under the receiver operating characteristic curve of 0.916
Conclusions
Timely prediction of progression from MCI to AD can be achieved using a series of NP test results and an RNN, both with and without using the baseline MRI data.
5.Predicting the Progression of Mild Cognitive Impairment to Alzheimer’s Dementia Using Recurrent Neural Networks With a Series of Neuropsychological Tests
Chaeyoon PARK ; Gihun JOO ; Minji ROH ; Seunghun SHIN ; Sujin YUM ; Na Young YEO ; Sang Won PARK ; Jae-Won JANG ; Hyeonseung IM ; For the Alzheimer’s DISEASE NEUROIMAGING INITIATIVE
Journal of Clinical Neurology 2024;20(5):478-486
Background:
and Purpose The prevalence of Alzheimer’s dementia (AD) is increasing as populations age, causing immense suffering for patients, families, and communities. Unfortunately, no treatments for this neurodegenerative disease have been established. Predicting AD is therefore becoming more important, because early diagnosis is the best way to prevent its onset and delay its progression.
Methods:
Mild cognitive impairment (MCI) is the stage between normal cognition and AD, with large variations in its progression. The disease can be effectively managed by accurately predicting the probability of MCI progressing to AD over several years. In this study we used the Alzheimer’s Disease Neuroimaging Initiative dataset to predict the progression of MCI to AD over a 3-year period from baseline. We developed and compared various recurrent neural network (RNN) models to determine the predictive effectiveness of four neuropsychological (NP) tests and magnetic resonance imaging (MRI) data at baseline.
Results:
The experimental results confirmed that the Preclinical Alzheimer’s Cognitive Composite score was the most effective of the four NP tests, and that the prediction performance of the NP tests improved over time. Moreover, the gated recurrent unit model exhibited the best performance among the prediction models, with an average area under the receiver operating characteristic curve of 0.916
Conclusions
Timely prediction of progression from MCI to AD can be achieved using a series of NP test results and an RNN, both with and without using the baseline MRI data.