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The limb deformity in children include congenital limb malformations or acquired from the damage of epiphyseal plate which caused by tumor, inflammation and trauma. Due to the complexity of the disease itself, rapid dynamic development and the characteristics of children's growth and development, the deformities are constantly changing. In addition, the serious lack of clinical diagnosis and treatment resources in the Department of Pediatric Orthopedics has led to the misdiagnosis and improper treatment of children's limb deformities. Thus, its necessary to find an intelligent way to help doctor to early diagnosis of limb deformity and provide a proper treatment in children.
The extraction and application of big data of children's limb deformities, intelligent labeling of image data, precise positioning, and perfecting the anatomical data of children's limb deformities.Improve the positioning accuracy of key points in X-ray images of children's limb deformities by means of step-by-step supervision to improve the accuracy of diagnosis.Realize an intelligent report generation system that combines patient background information, establish an end-to-end auxiliary diagnosis and treatment suggestion demonstration application system; realize a full set of artificial intelligence solutions for children's skeletal deformities, early screening and diagnosis of children, and forming an intelligent referral system of children's limb deformities.
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| Label | Type | Description | Intervention Names |
|---|---|---|---|
| limb deformity children | the imaging of limb deformity diagnosis by AI |
|
| Name | Type | Description | Arm Group Labels | Other Names |
|---|---|---|---|---|
| No interventions | Other | It is an observational study. No interventions. |
|
| Measure | Description | Time Frame |
|---|---|---|
| Deformity detection | It is a binary variable (1/0). The radiographic features of children would be evaluated by artificial Intelligence. If the deformity was detected, variable would be setted into 1. | At enrollment |
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Inclusion Criteria:
Children with limb deformity
Exclusion Criteria:
Children without limb deformity
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Children with limb deformity
| Name | Role | Phone | Extension | |
|---|---|---|---|---|
| Bo Ning, PhD | Contact | +86 13585700275 | ningbo@fudan.edu.cn |
| Name | Affiliation | Role |
|---|---|---|
| Bo Ning, PhD | Children's Hospital of Fudan University | Principal Investigator |
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| PubMed Identifier | Type | Citation | Retractions |
|---|---|---|---|
| 26031051 | Background | Mirskaia NB, Kolomenskaia AN, Siniakina AD. [Prevalence and medical and social importance of disorders and diseases of the musculoskeletal systems in children and adolescents (review of literature)]. Gig Sanit. 2015 Jan-Feb;94(1):97-104. Russian. | |
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