307 research outputs found
Lesion-Aware Cross-Phase Attention Network for Renal Tumor Subtype Classification on Multi-Phase CT Scans
Multi-phase computed tomography (CT) has been widely used for the
preoperative diagnosis of kidney cancer due to its non-invasive nature and
ability to characterize renal lesions. However, since enhancement patterns of
renal lesions across CT phases are different even for the same lesion type, the
visual assessment by radiologists suffers from inter-observer variability in
clinical practice. Although deep learning-based approaches have been recently
explored for differential diagnosis of kidney cancer, they do not explicitly
model the relationships between CT phases in the network design, limiting the
diagnostic performance. In this paper, we propose a novel lesion-aware
cross-phase attention network (LACPANet) that can effectively capture temporal
dependencies of renal lesions across CT phases to accurately classify the
lesions into five major pathological subtypes from time-series multi-phase CT
images. We introduce a 3D inter-phase lesion-aware attention mechanism to learn
effective 3D lesion features that are used to estimate attention weights
describing the inter-phase relations of the enhancement patterns. We also
present a multi-scale attention scheme to capture and aggregate temporal
patterns of lesion features at different spatial scales for further
improvement. Extensive experiments on multi-phase CT scans of kidney cancer
patients from the collected dataset demonstrate that our LACPANet outperforms
state-of-the-art approaches in diagnostic accuracy.Comment: This article has been accepted for publication in Computers in
Biology and Medicin
A Simple Sink Mobility Support Algorithm for Routing Protocols in Wireless Sensor Networks
Abstract. In order to support the sink mobility of conventional routing protocols, we propose a simple route maintaining algorithm which does not use the flooding method. In the proposed method, when the sink loses the connection with the source, it does not rebuild an entire route but simply repairs the existing route based on local information. Experimental results show that the proposed algorithm drastically improves the conventional routing protocols in terms of both energy and delay in case of mobile sink
Discovery of Q203, a potent clinical candidate for the treatment of tuberculosis
New therapeutic strategies are needed to combat the tuberculosis pandemic and the spread of multidrug-resistant (MDR) and extensively drug-resistant (XDR) forms of the disease, which remain a serious public health challenge worldwide1, 2. The most urgent clinical need is to discover potent agents capable of reducing the duration of MDR and XDR tuberculosis therapy with a success rate comparable to that of current therapies for drug-susceptible tuberculosis. The last decade has seen the discovery of new agent classes for the management of tuberculosis3, 4, 5, several of which are currently in clinical trials6, 7, 8. However, given the high attrition rate of drug candidates during clinical development and the emergence of drug resistance, the discovery of additional clinical candidates is clearly needed. Here, we report on a promising class of imidazopyridine amide (IPA) compounds that block Mycobacterium tuberculosis growth by targeting the respiratory cytochrome bc1 complex. The optimized IPA compound Q203 inhibited the growth of MDR and XDR M. tuberculosis clinical isolates in culture broth medium in the low nanomolar range and was efficacious in a mouse model of tuberculosis at a dose less than 1 mg per kg body weight, which highlights the potency of this compound. In addition, Q203 displays pharmacokinetic and safety profiles compatible with once-daily dosing. Together, our data indicate that Q203 is a promising new clinical candidate for the treatment of tuberculosis
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