11 research outputs found

    Overview of the ImageCLEF 2013 medical tasks

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    In 2013, the tenth edition of the medical task of the Image-CLEF benchmark was organized. For the first time, the ImageCLEFmedworkshop takes place in the United States of America at the annualAMIA (American Medical Informatics Association) meeting even thoughthe task was organized as in previous years in connection with the otherImageCLEF tasks. Like 2012, a subset of the open access collection ofPubMed Central was distributed. This year, there were four subtasks:modality classification, compound figure separation, image–based andcase–based retrieval. The compound figure separation task was includeddue to the large number of multipanel images available in the literatureand the importance to separate them for targeted retrieval. More com-pound figures were also included in the modality classification task tomake it correspond to the distribution in the full database. The retrievaltasks remained in the same format as in previous years but a largernumber of tasks were available for image–based and case–based tasks.This paper presents an analysis of the techniques applied by the tengroups participating 2013 in ImageCLEFmed

    ShARe/CLEF eHealth evaluation lab 2014, task 3: user-centred health information retrieval

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    This paper presents the results of task 3 of the ShARe/CLEF eHealth Evaluation Lab 2014. This evaluation lab focuses on improving access to medical information on the web. The task objective was to investigate the effect of using additional information such as a related discharge summary and external resources such as medical ontologies on the IR effectiveness, in a monolingual and in a multilingual context. The participants were allowed to submit up to seven runs for each language, one mandatory run using no additional information or external resources, and three each using or not using discharge summaries

    Shangri-La: a medical case-based retrieval tool

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    Large amounts of medical visual data are produced in hospitals daily and made available continuously via publications in the scientific literature, representing the medical knowledge. However, it is not always easy to find the desired information and in clinical routine the time to fulfil an information need is often very limited. Information retrieval systems are a useful tool to provide access to these documents/images in the biomedical literature related to information needs of medical professionals. Shangri–La is a medical retrieval system that can potentially help clinicians to make decisions on difficult cases. It retrieves articles from the biomedical literature when querying a case description and attached images. The system is based on a multimodal retrieval approach with a focus on the integration of visual information connected to text. The approach includes a query–adaptive multimodal fusion criterion that analyses if visual features are suitable to be fused with text for the retrieval. Furthermore, image modality information is integrated in the retrieval step. The approach is evaluated using the ImageCLEFmed 2013 medical retrieval benchmark and can thus be compared to other approaches. Results show that the final approach outperforms the best multimodal approach submitted to ImageCLEFmed 2013

    An Ensemble of Fine-Tuned Convolutional Neural Networks for Medical Image Classification

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    Cloud-Based Benchmarking of Medical Image Analysis

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    Medical imagin

    Use Case Oriented Medical Visual Information Retrieval & System Evaluation

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    Large amounts of medical visual data are produced daily in hospitals, while new imaging techniques continue to emerge. In addition, many images are made available continuously via publications in the scientific literature and can also be valuable for clinical routine, research and education. Information retrieval systems are useful tools to provide access to the biomedical literature and fulfil the information needs of medical professionals. The tools developed in this thesis can potentially help clinicians make decisions about difficult diagnoses via a case-based retrieval system based on a use case associated with a specific evaluation task. This system retrieves articles from the biomedical literature when querying with a case description and attached images. This thesis proposes a multimodal approach for medical case-based retrieval with focus on the integration of visual information connected to text. Furthermore, the ImageCLEFmed evaluation campaign was organised during this thesis promoting medical retrieval system evaluation

    Biomedical information extraction for matching patients to clinical trials

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    Digital Medical information had an astonishing growth on the last decades, driven by an unprecedented number of medical writers, which lead to a complete revolution in what and how much information is available to the health professionals. The problem with this wave of information is that performing a precise selection of the information retrieved by medical information repositories is very exhaustive and time consuming for physicians. This is one of the biggest challenges for physicians with the new digital era: how to reduce the time spent finding the perfect matching document for a patient (e.g. intervention articles, clinical trial, prescriptions). Precision Medicine (PM) 2017 is the track by the Text REtrieval Conference (TREC), that is focused on this type of challenges exclusively for oncology. Using a dataset with a large amount of clinical trials, this track is a good real life example on how information retrieval solutions can be used to solve this types of problems. This track can be a very good starting point for applying information extraction and retrieval methods, in a very complex domain. The purpose of this thesis is to improve a system designed by the NovaSearch team for TREC PM 2017 Clinical Trials task, which got ranked on the top-5 systems of 2017. The NovaSearch team also participated on the 2018 track and got a 15% increase on precision compared to the 2017 one. It was used multiple IR techniques for information extraction and processing of data, including rank fusion, query expansion (e.g. Pseudo relevance feedback, Mesh terms expansion) and experiments with Learning to Rank (LETOR) algorithms. Our goal is to retrieve the best possible set of trials for a given patient, using precise documents filters to exclude the unwanted clinical trials. This work can open doors in what can be done for searching and perceiving the criteria to exclude or include the trials, helping physicians even on the more complex and difficult information retrieval tasks

    Concept oriented biomedical information retrieval

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    Le domaine biomĂ©dical est probablement le domaine oĂč il y a les ressources les plus riches. Dans ces ressources, on regroupe les diffĂ©rentes expressions exprimant un concept, et dĂ©finit des relations entre les concepts. Ces ressources sont construites pour faciliter l’accĂšs aux informations dans le domaine. On pense gĂ©nĂ©ralement que ces ressources sont utiles pour la recherche d’information biomĂ©dicale. Or, les rĂ©sultats obtenus jusqu’à prĂ©sent sont mitigĂ©s : dans certaines Ă©tudes, l’utilisation des concepts a pu augmenter la performance de recherche, mais dans d’autres Ă©tudes, on a plutĂŽt observĂ© des baisses de performance. Cependant, ces rĂ©sultats restent difficilement comparables Ă©tant donnĂ© qu’ils ont Ă©tĂ© obtenus sur des collections diffĂ©rentes. Il reste encore une question ouverte si et comment ces ressources peuvent aider Ă  amĂ©liorer la recherche d’information biomĂ©dicale. Dans ce mĂ©moire, nous comparons les diffĂ©rentes approches basĂ©es sur des concepts dans un mĂȘme cadre, notamment l’approche utilisant les identificateurs de concept comme unitĂ© de reprĂ©sentation, et l’approche utilisant des expressions synonymes pour Ă©tendre la requĂȘte initiale. En comparaison avec l’approche traditionnelle de "sac de mots", nos rĂ©sultats d’expĂ©rimentation montrent que la premiĂšre approche dĂ©grade toujours la performance, mais la seconde approche peut amĂ©liorer la performance. En particulier, en appariant les expressions de concepts comme des syntagmes stricts ou flexibles, certaines mĂ©thodes peuvent apporter des amĂ©liorations significatives non seulement par rapport Ă  la mĂ©thode de "sac de mots" de base, mais aussi par rapport Ă  la mĂ©thode de Champ AlĂ©atoire Markov (Markov Random Field) qui est une mĂ©thode de l’état de l’art dans le domaine. Ces rĂ©sultats montrent que quand les concepts sont utilisĂ©s de façon appropriĂ©e, ils peuvent grandement contribuer Ă  amĂ©liorer la performance de recherche d’information biomĂ©dicale. Nous avons participĂ© au laboratoire d’évaluation ShARe/CLEF 2014 eHealth. Notre rĂ©sultat Ă©tait le meilleur parmi tous les systĂšmes participants.Health and biomedical area is probably the area where there are the richest domain resources. In these resources, different expressions are clustered into well defined concepts. They are designed to facilitate public access to the health information and are widely believed to be useful for biomedical information retrieval. However the results of previous works are highly mitigated: in some studies, concepts slightly improve the retrieval performance, while in some others degradations are observed. It is however difficult to compare the results directly due to the fact that they have been performed on different test collections. It is still unclear whether and how medical information retrieval can benefit from these knowledge resources. In this thesis we aim at comparing in the same framework two families of approaches to exploit concepts - using concept IDs as the representation units or using synonymous concept expressions to expand the original query. Compared to a traditional bag-of-words (BOW) baseline, our experiments on test collections show that concept IDs always degrades retrieval effectiveness, whereas the second approach can lead to some improvements. In particular, by matching the concept expressions as either strict or flexible phrases, some methods can lead to significant improvement over the BOW baseline and even over MRF model on most query sets. This study shows experimentally that when concepts are used in a suitable way, it can help improve the effectiveness of medical information retrieval. We participated at the ShARe/CLEF 2014 eHealth Evaluation Lab. Our result was the best among all the participating systems

    Biomedical Question Answering: A Survey of Approaches and Challenges

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    Automatic Question Answering (QA) has been successfully applied in various domains such as search engines and chatbots. Biomedical QA (BQA), as an emerging QA task, enables innovative applications to effectively perceive, access and understand complex biomedical knowledge. There have been tremendous developments of BQA in the past two decades, which we classify into 5 distinctive approaches: classic, information retrieval, machine reading comprehension, knowledge base and question entailment approaches. In this survey, we introduce available datasets and representative methods of each BQA approach in detail. Despite the developments, BQA systems are still immature and rarely used in real-life settings. We identify and characterize several key challenges in BQA that might lead to this issue, and discuss some potential future directions to explore.Comment: In submission to ACM Computing Survey
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