589 research outputs found
Explain Variance of Prediction in Variational Time Series Models for Clinical Deterioration Prediction
Missingness and measurement frequency are two sides of the same coin. How
frequent should we measure clinical variables and conduct laboratory tests? It
depends on many factors such as the stability of patient conditions, diagnostic
process, treatment plan and measurement costs. The utility of measurements
varies disease by disease, patient by patient. In this study we propose a novel
view of clinical variable measurement frequency from a predictive modeling
perspective, namely the measurements of clinical variables reduce uncertainty
in model predictions. To achieve this goal, we propose variance SHAP with
variational time series models, an application of Shapley Additive
Expanation(SHAP) algorithm to attribute epistemic prediction uncertainty. The
prediction variance is estimated by sampling the conditional hidden space in
variational models and can be approximated deterministically by delta's method.
This approach works with variational time series models such as variational
recurrent neural networks and variational transformers. Since SHAP values are
additive, the variance SHAP of binary data imputation masks can be directly
interpreted as the contribution to prediction variance by measurements. We
tested our ideas on a public ICU dataset with deterioration prediction task and
study the relation between variance SHAP and measurement time intervals
Enabling Feedback-Free MIMO Transmission for FD-RAN: A Data-driven Approach
To enhance flexibility and facilitate resource cooperation, a novel
fully-decoupled radio access network (FD-RAN) architecture is proposed for 6G.
However, the decoupling of uplink (UL) and downlink (DL) in FD-RAN makes the
existing feedback mechanism ineffective. To this end, we propose an end-to-end
data-driven MIMO solution without the conventional channel feedback procedure.
Data-driven MIMO can alleviate the drawbacks of feedback including overheads
and delay, and can provide customized precoding design for different BSs based
on their historical channel data. It essentially learns a mapping from
geolocation to MIMO transmission parameters. We first present a codebook-based
approach, which selects transmission parameters from the statistics of discrete
channel state information (CSI) values and utilizes integer interpolation for
spatial inference. We further present a non-codebook-based approach, which 1)
derives the optimal precoder from the singular value decomposition (SVD) of the
channel; 2) utilizes variational autoencoder (VAE) to select the representative
precoder from the latent Gaussian representations; and 3) exploits Gaussian
process regression (GPR) to predict unknown precoders in the space domain.
Extensive simulations are performed on a link-level 5G simulator using
realistic ray-tracing channel data. The results demonstrate the effectiveness
of data-driven MIMO, showcasing its potential for application in FD-RAN and 6G
Text-guided Eyeglasses Manipulation with Spatial Constraints
Virtual try-on of eyeglasses involves placing eyeglasses of different shapes
and styles onto a face image without physically trying them on. While existing
methods have shown impressive results, the variety of eyeglasses styles is
limited and the interactions are not always intuitive or efficient. To address
these limitations, we propose a Text-guided Eyeglasses Manipulation method that
allows for control of the eyeglasses shape and style based on a binary mask and
text, respectively. Specifically, we introduce a mask encoder to extract mask
conditions and a modulation module that enables simultaneous injection of text
and mask conditions. This design allows for fine-grained control of the
eyeglasses' appearance based on both textual descriptions and spatial
constraints. Our approach includes a disentangled mapper and a decoupling
strategy that preserves irrelevant areas, resulting in better local editing. We
employ a two-stage training scheme to handle the different convergence speeds
of the various modality conditions, successfully controlling both the shape and
style of eyeglasses. Extensive comparison experiments and ablation analyses
demonstrate the effectiveness of our approach in achieving diverse eyeglasses
styles while preserving irrelevant areas.Comment: Revised version: add some experiment
The Distance Between Exons and Alu Elements Influences RNA Circularization Efficiency
Circular RNA (circRNA) is a category of RNA that is created when the spliceosome back-splices an exon, thereby forming an RNA covalent circle. A few circRNAs have been shown to have regulatory functions, but the functions of most circRNAs are not known. Previous studies have demonstrated that repetitive elements flanking the exon(s), such as Alu elements, facilitate circularization, and have identified the minimal size of repetitive elements needed to drive circularization. We studied how the distance between exon splice donors/acceptors and Alu elements affects the efficiency of RNA circularization. To create the distance gradient, we inserted and/or deleted sequences between the splice donors/acceptor and Alu elements. We engineered the circular RNA so that it would express GFP after circularization. To measure the circularization efficiency, we conducted Western blots and Northern blots on the proteins and RNA harvested from cells. We showed that in HEK293 cells the distance of the repetitive element upstream of the exon has a large effect on circularization, while the distance downstream has little effect. Combining these observations, we created a minimal construct that can be circularized efficiently and expressed much more protein than our original construct. Overall, our study further contributed to the understanding of the cis elements that affect circular RNA formation in vivo, and design of vectors to efficiently express proteins from very stable RNAs.Bachelor of Scienc
- …