作者
Juan Romero, Sharon Chiang, Daniel M Goldenholz
发表日期
2021/10/1
期刊
Seizure
卷号
91
页码范围
499-502
出版商
WB Saunders
简介
Purpose
Recently a realistic simulator of patient seizure diaries was developed that can reproduce effects seen in randomized clinical trials (RCTs). RCTs suffer from high costs and statistical inefficiencies. Using realistic simulation and machine learning this study aimed to identify a more statistically efficient outcome metric.
Methods
Five candidate deep learning architectures with 54 permutations of hyperparameters were compared to the traditional standard, median percent change (MPC). Each were also tested for type 1 error. All models had similar outcomes, with appropriate low levels of type 1 error.
Results
The simplest model was equivalent to a logistic regression of a histogram of individual percentage changes in seizure rate, requiring 21-22% less patients to discriminate drug from placebo at 90% power. This model was referred to as LPC.
Conclusion
Future studies to validate LPC may enable faster, cheaper …
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