Primary light chain amyloidosis is a rare hematologic disease with multi-organ involvement.Nearly one-third of patients with amyloidosis experience five or more consultations before diagnosis,which may lead to a poor ...Primary light chain amyloidosis is a rare hematologic disease with multi-organ involvement.Nearly one-third of patients with amyloidosis experience five or more consultations before diagnosis,which may lead to a poor prognosis due to delayed diagnosis.Early risk prediction based on artificial intelligence is valuable for clinical diagnosis and treatment of amyloidosis.For this disease,we propose an Evolutionary Neural Architecture Searching(ENAS)based risk prediction model,which achieves high-precision early risk prediction using physical examination data as a reference factor.To further enhance the value of clinic application,we designed a natural language-based interpretable system around the NAS-assisted risk prediction model for amyloidosis,which utilizes a large language model and Retrieval-Augmented Generation(RAG)to achieve further interpretation of the predicted conclusions.We also propose a document-based global semantic slicing approach in RAG to achievemore accurate slicing and improve the professionalism of the generated interpretations.Tests and implementation show that the proposed risk prediction model can be effectively used for early screening of amyloidosis and that the interpretation method based on the large language model and RAG can effectively provide professional interpretation of predicted results,which provides an effective method and means for the clinical applications of AI.展开更多
How to process aggregate queries over data streams efficiently and effectively have been becoming hot re search topics in both academic community and industrial community. Aiming at the issues, a novel Linked-tree alg...How to process aggregate queries over data streams efficiently and effectively have been becoming hot re search topics in both academic community and industrial community. Aiming at the issues, a novel Linked-tree algorithm based on sliding window is proposed in this paper. Due to the proposal of concept area, the Linked-tree algorithm reuses many primary results in last window and then avoids lots of unnecessary repeated comparison operations between two successive windows. As a result, execution efficiency of MAX query is improved dramatically. In addition, since the size of memory is relevant to the number of areas but irrelevant to the size of sliding window, memory is economized greatly. The extensive experimental results show that the performance of Linked-tree algorithm has significant improvement gains over the traditional SC (Simple Compared) algorithm and Ranked-tree algorithm.展开更多
Caching is an important technique to enhance the efficiency of query processing. Unfortunately, traditional caching mechanisms are not efficient for deep Web because of storage space and dynamic maintenance limitation...Caching is an important technique to enhance the efficiency of query processing. Unfortunately, traditional caching mechanisms are not efficient for deep Web because of storage space and dynamic maintenance limitations. In this paper, we present on providing a cache mechanism based on Top-K data source (KDS-CM) instead of result records for deep Web query. By integrating techniques from IR and Top-K, a data reorganization strategy is presented to model KDS-CM. Also some measures about cache management and optimization are proposed to improve the performances of cache effectively. Experimental results show the benefits of KDS-CM in execution cost and dynamic maintenance when compared with various alternate strategies.展开更多
基金supported by Liaoning Province Key R&D Program Project(Grant Nos.2019JH2/10100027)in part by Grants from Shenyang Science and Technology Plan Project(Grant No.RC210469).
文摘Primary light chain amyloidosis is a rare hematologic disease with multi-organ involvement.Nearly one-third of patients with amyloidosis experience five or more consultations before diagnosis,which may lead to a poor prognosis due to delayed diagnosis.Early risk prediction based on artificial intelligence is valuable for clinical diagnosis and treatment of amyloidosis.For this disease,we propose an Evolutionary Neural Architecture Searching(ENAS)based risk prediction model,which achieves high-precision early risk prediction using physical examination data as a reference factor.To further enhance the value of clinic application,we designed a natural language-based interpretable system around the NAS-assisted risk prediction model for amyloidosis,which utilizes a large language model and Retrieval-Augmented Generation(RAG)to achieve further interpretation of the predicted conclusions.We also propose a document-based global semantic slicing approach in RAG to achievemore accurate slicing and improve the professionalism of the generated interpretations.Tests and implementation show that the proposed risk prediction model can be effectively used for early screening of amyloidosis and that the interpretation method based on the large language model and RAG can effectively provide professional interpretation of predicted results,which provides an effective method and means for the clinical applications of AI.
基金Supported by the National Natural Science Foun-dation of China (60573089) the National 985 Project Fundation(985-2-DB-Y01)
文摘How to process aggregate queries over data streams efficiently and effectively have been becoming hot re search topics in both academic community and industrial community. Aiming at the issues, a novel Linked-tree algorithm based on sliding window is proposed in this paper. Due to the proposal of concept area, the Linked-tree algorithm reuses many primary results in last window and then avoids lots of unnecessary repeated comparison operations between two successive windows. As a result, execution efficiency of MAX query is improved dramatically. In addition, since the size of memory is relevant to the number of areas but irrelevant to the size of sliding window, memory is economized greatly. The extensive experimental results show that the performance of Linked-tree algorithm has significant improvement gains over the traditional SC (Simple Compared) algorithm and Ranked-tree algorithm.
基金Supported by the National Natural Science Foundation of China (60673139, 60473073, 60573090)
文摘Caching is an important technique to enhance the efficiency of query processing. Unfortunately, traditional caching mechanisms are not efficient for deep Web because of storage space and dynamic maintenance limitations. In this paper, we present on providing a cache mechanism based on Top-K data source (KDS-CM) instead of result records for deep Web query. By integrating techniques from IR and Top-K, a data reorganization strategy is presented to model KDS-CM. Also some measures about cache management and optimization are proposed to improve the performances of cache effectively. Experimental results show the benefits of KDS-CM in execution cost and dynamic maintenance when compared with various alternate strategies.