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Data Clustering Study With Artificial Intelligence and Phenotyping of Patients Who Presented With Acute Pulmonary Embolism
The aim will be to identify clinically relevant phenotypes in patients with acute pulmonary embolism. Hierarchical clustering methods combined with unsupervised learning (machine learning) will be used to obtain groups of patients who are homogeneous at diagnosis. Evaluating their prognosis at 6 months (recurrence or chronic thromboembolic pulmonary hypertension), account the first 3 months of anticoagulant treatment, would provide an aid to medical decision-making. This research will include a retrospective and a prospective parts. The retrospective part will include patients who have been admitted to CHITS for acute pulmonary embolism since 2019. For the prospective part, it is planned to include patients with same characteristics over the years 2024 and 2025. More than 2,500 patients are expected to be included. This research will have no impact on current patient care. Data from consultations and various examinations carried out as part of care will be collected for six months post-diagnosis in order to meet the research objectives.
Context : Artificial Intelligence : clustering and unsupervised learning: Artificial Intelligence (AI) is a field that combines computer science with data sets, with the aim of enabling a machine to imitate the cognitive abilities of human being. Machine learning (ML) and its sub-domain deep learning, which uses layers of neurons, are two major sub-domains of AI. The difference lies in training of each algorithm. Supervised learning, which involves training a model on known input and output data to predict future outputs, and unsupervised learning involves the discovery of hidden patterns and intrinsic underlying structures in the input data. The aim of clustering methods is to group a set of individuals into homogeneous classes. Non-hierarchical methods can be used to classify massive data but require to fixe in advance the number of classes. Hierarchical methods, which are more time-consuming to compute, consist of a series of nested partitions represented by a clustering tree. The optimal number of classes can be determined a posteriori by reading the tree. In presence of a large number of individuals, it is common to combine non-hierarchical and hierarchical techniques. When classes are not clearly known in advance, clustering methods are use with unsupervised learning (ML) \[1\]. Datasets are generally divided into three disjoint datasets: training data, used to train the chosen algorithm(s); validation data, used to check performance of result; and test data, used only at the end of the process. Venous thromboembolic disease: Venous thromboembolic disease (VTE) is a common pathology whose incidence is imperfectly known, but increases with age, reaching 1% in subjects over 75 years old. In France, it is estimated that every year over 100,000 people develop VTE, which is responsible for between 5,000 and 10,000 deaths. Deep vein thrombosis (DVT) and pulmonary embolism (PE) are the two main types of VTE. DVT corresponds to partial or total occlusion of a deep vein by a thrombus, most often localized in the lower limbs. PE is defined as partial or total occlusion of the pulmonary arteries or their branches. The main risk of DVT is the occurrence of PE, which can be life threatening. Other VTE-specific complications and possible adverse outcomes include thromboembolic recurrence (either DVT or PE), chronic thromboembolic pulmonary hypertension and post-thrombotic syndrome in DVT. Current management of VTE is mainly based on anticoagulant therapy. The duration of treatment varies according to the estimated risk of recurrence if treatment is withdrawn, essentially depending on whether or not there is a prior major risk factor \[2\]. In this subgroup of PE patients, in the absence of major risk factors, risk of recurrence is considered intermediate and varies according to whether the event is a first episode or a recurrence, and whether there are obstructive pulmonary sequelae or not \[3\]. More recently, the therapeutic strategy has become more complex, with inclusion of minor risk factors that modulate duration of treatment without relevant evidence. Moreover, regardless of the duration of treatment, the dosage of anticoagulation beyond the sixth month is uncertain for Direct Oral Anticoagulants. Hypotheses : The aim will be to use the database to identify clinically relevant phenotypes in patients with acute pulmonary embolism. Hierarchical clustering methods combined with unsupervised learning (machine learning) will be used to obtain groups of patients who are homogeneous at diagnosis. Evaluating their prognosis at 6 months (recurrence or chronic thromboembolic pulmonary hypertension), account the first 3 months of anticoagulant treatment, would provide an aid to medical decision-making. An analysis of the six-month evolution of homogeneous patient groups with acute pulmonary embolism, constructed using clustering methods with unsupervised learning has never been conducted before. This innovative project within a large-scale hospital infrastructure is likely to offer doctors a decision-making aid, and patients a scientifically-validated form of therapeutic management. Material and Methods : This research will include a retrospective and a prospective parts. The retrospective part will include patients who have been admitted to CHITS for acute pulmonary embolism since 2019 (around 1900 patients). For the prospective part, it is planned to include patients with same characteristics over the years 2024 and 2025 (approximately 765 patients). If individual information is not available or they object to the processing of their data for 25% of the patients, a large volume of data on over 2,500 patients could potentially be analysed in this trial. This research will have no impact on current patient care. Data from consultations and various examinations carried out as part of the care will be collected for six months post-diagnosis to meet the research objectives. Unsupervised clustering methods used in this study combine hierarchical and non-hierarchical methods. Following the hierarchical ascending clustering, Ward's index is used to determine the number of groups of interest. The centroids of these groups are then considered to initialize a partitioning algorithm, such as the k-means algorithm. Once most medically relevant groups have been determined, six-month evolution (stable, aggravation or progress) are compared. Factors influencing progression during the first three months of treatment can also be included in a statistic model, depending on their ability to predict aggravation. All these explorations should provide a basis for medical decision-making.
Age
18 - No limit years
Sex
ALL
Healthy Volunteers
No
centre hospitalier intercommunal Toulon La Seyne sur Mer - Internal and vascular medicine
Toulon, France
Start Date
December 11, 2023
Primary Completion Date
July 1, 2026
Completion Date
July 1, 2026
Last Updated
March 18, 2026
2,500
ESTIMATED participants
Hierarchical clustering methods
OTHER
Lead Sponsor
Centre Hospitalier Intercommunal de Toulon La Seyne sur Mer
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