- ICH GCP
- Registro degli studi clinici negli Stati Uniti
- Sperimentazione clinica NCT07570680
Hemorrhage Stroke Decision Making Model Based Deep Learning (BrainHemoAI System)
Construction of an Integrated Intelligent Model for Spontaneous Intracerebral Hemorrhage Based on Deep Learning
Panoramica dello studio
Stato
Condizioni
Intervento / Trattamento
Descrizione dettagliata
Hemorrhagic stroke is a serious cerebrovascular disease, accounting for about 20% of all strokes. It refers to cerebral hemorrhage and subarachnoid hemorrhage caused by intracranial vascular diseases such as intracranial aneurysms, cerebral and spinal vascular malformations and moyamoya disease under the effect of blood flow. It has the characteristics of high incidence rate, high disability rate and high mortality rate, and has caused huge economic burden to patients, families and society.
Hemorrhagic stroke is one of the high-risk diseases in Jiangxi Province, and has become a major public health challenge and a key social issue that urgently needs to be addressed. On the one hand, the diagnosis and treatment of hemorrhagic stroke have a certain degree of complexity, involving multiple disciplines, especially neurology and endocrinology, which have established multiple diagnostic, evaluation, treatment, and rehabilitation systems. Different systems have different focuses, but limited by the level of understanding of the disease, there have been only basic treatment principles for decades, and there has been no breakthrough in specific treatment plans. On the other hand, with the development of the economy and the improvement of living standards, clinical physicians and patients not only focus on the survival rate after hemorrhagic stroke, but also pay more attention to neurological function recovery and long-term quality of life. Due to the limitations of detection technology in the past, it was difficult to accurately describe diseases and truly develop individualized diagnosis and treatment plans, resulting in significant differences in patient prognosis. How to leverage advances in diagnosis and treatment technology to ultimately achieve precision, individualization, and homogenization in the diagnosis and treatment of hemorrhagic stroke is a key focus for the future.
Although hemorrhagic stroke also has the characteristics of high mortality and disability rates, and constitutes a major public health problem worldwide, there is a relative lack of in-depth research teams for hemorrhagic stroke in China. The current preoperative imaging evaluation of spontaneous cerebral hemorrhage is still limited to the traditional Tada formula, and there are subjective differences in diagnosis among different doctors, making it difficult to achieve homogenization in clinical decision-making. Hemorrhagic stroke is a common and frequently occurring disease in Jiangxi Province. Therefore, establishing a new diagnosis and treatment system focused on hemorrhagic stroke can not only fill the research gap in this field in China, improve the accuracy and homogeneity of hemorrhagic stroke diagnosis and treatment, but also promote related research progress to reduce the mortality and disability rates of this disease and improve the clinical prognosis of patients.
Tipo di studio
Iscrizione (Stimato)
Contatti e Sedi
Contatto studio
- Nome: Ping Hu, PhD;MD
- Numero di telefono: 13207109734
- Email: hp666edu@163.com
Backup dei contatti dello studio
- Nome: Xingen Zhu, Prof
- Numero di telefono: 13803546020
- Email: zxg2008vip@163.com
Luoghi di studio
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Nanchang, Cina
- Reclutamento
- The Second Affiliated Hospital of Nanchang University
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Contatto:
- Xingen Zhu
- Numero di telefono: 13803546020
- Email: zxg2008vip@163.com
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Criteri di partecipazione
Criteri di ammissibilità
Età idonea allo studio
- Bambino
- Adulto
- Adulto più anziano
Accetta volontari sani
Metodo di campionamento
Popolazione di studio
Descrizione
Inclusion Criteria:
- Age >= 8 years old;
- Patients diagnosed with spontaneous hemorrhagic stroke based on medical history and auxiliary examinations;
- Received non-contrast computed tomography (NCCT) in the outpatient or emergency department;
- Treated in accordance with standard clinical guidelines during hospitalization;
- Have complete clinical data.
Exclusion Criteria:
- Had undergone surgical treatment in another hospital before admission;
- Was in a state of shock upon admission;
- Had severe heart, liver, or kidney dysfunction or other life-threatening systemic diseases;
- Died during hospitalization;
- Had an expected lifespan of less than six months or was unable to complete the study follow-up for other reasons.
Piano di studio
Come è strutturato lo studio?
Dettagli di progettazione
Cosa sta misurando lo studio?
Misure di risultato primarie
Misura del risultato |
Misura Descrizione |
Lasso di tempo |
|---|---|---|
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Area Under Curve
Lasso di tempo: 90-day and 180-day
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90-day and 180-day mRS score, survival status, functional independence (Barthel index).
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90-day and 180-day
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Misure di risultato secondarie
Misura del risultato |
Misura Descrizione |
Lasso di tempo |
|---|---|---|
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Sensitivity ,Specificity,True Positive Rate,False Positive Rate
Lasso di tempo: Baseline (admission), 24 hours postoperatively, 3 days postoperatively, 7 days postoperatively, discharge, 90-day follow-up, 180-day follow-up
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Including hospital stay, ICU stay, hospitalization costs, rebleeding, delayed cerebral ischemia, intracranial infection, and hydrocephalus flow surgery needs
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Baseline (admission), 24 hours postoperatively, 3 days postoperatively, 7 days postoperatively, discharge, 90-day follow-up, 180-day follow-up
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Collaboratori e investigatori
Pubblicazioni e link utili
Pubblicazioni generali
- Du S, Wu Y, Tao J, Shu L, Yan T, Xiao B, Lv S, Ye M, Gong Y, Zhu X, Hu P, Wu M. Development and Validation of Machine Learning Models for Outcome Prediction in Patients with Poor-Grade Aneurysmal Subarachnoid Hemorrhage Following Endovascular Treatment. Ther Clin Risk Manag. 2025 Mar 7;21:293-307. doi: 10.2147/TCRM.S504745. eCollection 2025.
- Hu P, Wu Y, Yan T, Shu L, Liu F, Xiao B, Ye M, Wu M, Lv S, Zhu X. Deep learning-based quantification of total bleeding volume and its association with complications, disability, and death in patients with aneurysmal subarachnoid hemorrhage. J Neurosurg. 2024 Mar 29;141(2):343-354. doi: 10.3171/2024.1.JNS232280. Print 2024 Aug 1.
- Hu P, Yan T, Xiao B, Shu H, Sheng Y, Wu Y, Shu L, Lv S, Ye M, Gong Y, Wu M, Zhu X. Deep learning-assisted detection and segmentation of intracranial hemorrhage in noncontrast computed tomography scans of acute stroke patients: a systematic review and meta-analysis. Int J Surg. 2024 Jun 1;110(6):3839-3847. doi: 10.1097/JS9.0000000000001266.
- Hu P, Zhou H, Yan T, Miu H, Xiao F, Zhu X, Shu L, Yang S, Jin R, Dou W, Ren B, Zhu L, Liu W, Zhang Y, Zeng K, Ye M, Lv S, Wu M, Deng G, Hu R, Zhan R, Chen Q, Zhang D, Zhu X. Deep learning-assisted identification and quantification of aneurysmal subarachnoid hemorrhage in non-contrast CT scans: Development and external validation of Hybrid 2D/3D UNet. Neuroimage. 2023 Oct 1;279:120321. doi: 10.1016/j.neuroimage.2023.120321. Epub 2023 Aug 11.
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Inizio studio (Effettivo)
Completamento primario (Stimato)
Completamento dello studio (Stimato)
Date di iscrizione allo studio
Primo inviato
Primo inviato che soddisfa i criteri di controllo qualità
Primo Inserito (Effettivo)
Aggiornamenti dei record di studio
Ultimo aggiornamento pubblicato (Effettivo)
Ultimo aggiornamento inviato che soddisfa i criteri QC
Ultimo verificato
Maggiori informazioni
Termini relativi a questo studio
Termini MeSH pertinenti aggiuntivi
Altri numeri di identificazione dello studio
- IIT-O-2025-054
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Informazioni su farmaci e dispositivi, documenti di studio
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Queste informazioni sono state recuperate direttamente dal sito web clinicaltrials.gov senza alcuna modifica. In caso di richieste di modifica, rimozione o aggiornamento dei dettagli dello studio, contattare register@clinicaltrials.gov. Non appena verrà implementata una modifica su clinicaltrials.gov, questa verrà aggiornata automaticamente anche sul nostro sito web .
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