ChiCTR2300076556 版本V1.1 版本创建时间2024/03/25 14:31:45 中国临床试验注册中心

审核状态:

Project audit state:

通过审核

Successful

注册号:

Registration number:

ChiCTR2300076556 

最近更新日期:

Date of Last Refreshed on:

2023-10-11 16:32:26 

注册时间:

Date of Registration:

2023-10-11 00:00:00 

注册号状态:

预注册

Registration Status:

Prospective registration

注册题目:

基于深度学习人工智能诊断对比免疫组化检测结直肠癌MMR状态的前瞻性研究

Public title:

A prospective study of MMR status detection in colorectal cancer based on deep learning artificial intelligence diagnosis versus immunohistochemistry

注册题目简写:

English Acronym:

研究课题的正式科学名称:

基于深度学习人工智能诊断对比免疫组化检测结直肠癌MMR状态的前瞻性研究

Scientific title:

A prospective study of MMR status detection in colorectal cancer based on deep learning artificial intelligence diagnosis versus immunohistochemistry

研究课题代号(代码):

Study subject ID:

在二级注册机构或其它机构的注册号:

The registration number of the Partner Registry or other register:

申请注册联系人:

郑雪怡 

研究负责人:

蔡木炎 

Applicant:

Xueyi Zheng 

Study leader:

Muyan Cai 

申请注册联系人电话:

Applicant telephone:

+86 156 2640 5986

研究负责人电话:

Study leader's
telephone:

+86 87342775

申请注册联系人传真 :

Applicant Fax:

研究负责人传真:

Study leader's fax:

申请注册联系人电子邮件:

Applicant E-mail:

zhengxy1@sysucc.org.cn

研究负责人电子邮件:

Study leader's E-mail:

caimy@sysucc.org.cn

申请单位网址(自愿提供):

Applicant website(voluntary supply):

研究负责人网址(自愿提供):

Study leader's website(voluntary supply):

申请注册联系人通讯地址:

广州市越秀区东风东路651号

研究负责人通讯地址:

广州市越秀区东风东路651号

Applicant address:

Dong feng east road, 651, Guangzhou

Study leader's address:

Dong feng east road, 651, Guangzhou

申请注册联系人邮政编码:

Applicant postcode:

研究负责人邮政编码:

Study leader's postcode:

申请人所在单位:

中山大学肿瘤防治中心

Applicant's institution:

Sun Yat-sen University Cancer Center

研究负责人所在单位:

中山大学肿瘤防治中心

Affiliation of the Leader:

Sun Yat-sen University Cancer Center

是否获伦理委员会批准:

Approved by ethic committee:

Yes

伦理委员会批件文号:

Approved No. of ethic committee:

SL-B2023-288-03

伦理委员会批件附件:

Approved file of Ethical Committee:

查看附件View

批准本研究的伦理委员会名称:

中山大学肿瘤防治中心伦理委员会

Name of the ethic committee:

Ethics Committee of Sun Yat-sen University Cancer Center

伦理委员会批准日期:

Date of approved by ethic committee:

2023-08-25 00:00:00

伦理委员会联系人:

潘旭芝

Contact Name of the ethic committee:

Xuzhi Pan

伦理委员会联系地址:

广州市越秀区东风东路651号

Contact Address of the ethic committee:

Dong feng east road, 651, Guangzhou

伦理委员会联系人电话:

Contact phone of the ethic committee:

+86 20 8734 3009

伦理委员会联系人邮箱:

Contact email of the ethic committee:

研究实施负责(组长)单位:

中山大学肿瘤防治中心

Primary sponsor:

Sun Yat-sen University Cancer Center

研究实施负责(组长)单位地址:

广州市越秀区东风东路651号

Primary sponsor's address:

Dong feng east road, 651, Guangzhou

试验主办单位(项目批准或申办者):

Secondary sponsor:

国家:

中国

省(直辖市):

广东省

市(区县):

Country:

China

Province:

Guangdong

City:

单位(医院):

中山大学附属肿瘤医院

具体地址:

广东省广州市越秀区东风东路651号

Institution
hospital:

Sun Yat-sen University Cancer Center

Address:

Dongfeng East Road,651, Guangzhou, China

经费或物资来源:

Source(s) of funding:

none

研究疾病:

结直肠癌  

Target disease:

colorectal cancer

研究疾病代码:

Target disease code:

研究类型:

诊断试验

Study type:

Diagnostic test

研究所处阶段:

探索性研究/预试验 

Study phase:

0

研究设计:

诊断试验诊断准确性 

Study design:

Diagnostic test for accuracy 

研究目的:

检测基于深度学习人工智能诊断检测结直肠癌MMR状态的准确性和可行性,比较基于深度学习人工智能诊断和免疫组化诊断结直肠癌MMR状态的性价比。  

Objectives of Study:

Comparison of MMR status detection in colorectal cancer based on deep learning artificial intelligence diagnosis versus immunohistochemistry

药物成份或治疗方案详述:

 

Description for medicine or protocol of treatment in detail:

 

纳入标准:

(1)原发性结直肠癌患者 (2)年龄≥18 岁且≤75 岁; (3)未行术前治疗:包括放疗、化疗、免疫治疗等; (4)H&E 病理切片来源于手术切除的大体病理标本; (5)通过免疫组化检测有明确的 MMR 状态。

Inclusion criteria

1: primary colorectal cancer 2: ages ranging from 18 to 75 years old 3: no preoperative treatment 4: HE stained slides from surgical sections 5: definite MMR status

排除标准:

1: 病理切片可见较大的皱褶 2: 病理切片扫描不清晰、未准确对焦 3: 患者临床病理资料不完善

Exclusion criteria:

1: large folds 2: out of focus 3: incomplete clinicopathological information

研究实施时间:

Study execute time:

From 2023-11-01 00:00:00 To 2026-12-31 00:00:00  

征募观察对象时间:

Recruiting time:

From 2023-11-01 00:00:00 To 2026-12-31 00:00:00

诊断试验:

Diagnostic Tests:

金标准或参考标准(即可准确诊断某疾病的单项方法或多项联合方法,在本研究中用于诊断是否有该病的临床参考标准):

错配修复蛋白免疫组化检测结果

Gold Standard or Reference Standard (The clinical reference standards required to establish the presence or absence of the target condition in the tested population in present study):

MMR status detection by immunohistochemistry

指标试验(即本研究的待评估诊断试验,无论为方法、生物标志物或设备,均请列出名称):

人工智能模型检测结直肠癌患者错配修复蛋白状态

Index test:

deep learning model predicting MMR status of patients with colorectal cancer

目标人群(可以是某种疾病患者或正常人群,详细描述其疾病特征,注意应纳入符合分布特点的全序列病例,具有良好的代表性)

结直肠癌患者

例数:

Sample size:

500

Target condition (The target condition is a particular disease or disease stage that the index test will be intended to identify. Please specify the characteristics in detail; the population should has a complete spectrum and good representative):

patients with colorectal cancer

容易混淆的疾病人群(即与目标疾病不易区分的一种或多种不同疾病,应避免采用正常人群对照的病例-对照设计):

例数:

Sample size:

0

Population with condition difficult to distinguish from the target condition, the normal population in a case-control study design should be avoid:

none

研究实施地点:

Countries of recruitment and research settings:

国家:

中国

省(直辖市):

广东省 

市(区县):

 

Country:

China

Province:

Guangdong

City:

单位(医院):

中山大学附属肿瘤医院 

单位级别:

三甲 

Institution
hospital:

Sun Yat-sen University Cancer Center

Level of the institution:

Tertiary A

国家:

中国

省(直辖市):

广东 

市(区县):

 

Country:

China

Province:

Guangdong

City:

单位(医院):

广州医科大学附属肿瘤医院 

单位级别:

三甲 

Institution
hospital:

Guangzhou Medical University affiliated cancer institude

Level of the institution:

Tertiary A

国家:

中国

省(直辖市):

广东 

市(区县):

 

Country:

China

Province:

Guangdong

City:

单位(医院):

中山大学附属第一医院 

单位级别:

三甲 

Institution
hospital:

Sun Yat-sen Universiy affilated first hospital

Level of the institution:

Tertiary A

国家:

中国

省(直辖市):

上海 

市(区县):

 

Country:

China

Province:

Shanghai

City:

单位(医院):

复旦大学附属肿瘤医院 

单位级别:

三甲 

Institution
hospital:

Fudan University shanghai cancer center

Level of the institution:

Tertiary A

国家:

中国

省(直辖市):

天津 

市(区县):

 

Country:

China

Province:

Tianjin

City:

单位(医院):

天津大学附属肿瘤医院 

单位级别:

三甲 

Institution
hospital:

Tianjin University affiliated cancer institude

Level of the institution:

Tertiary A

测量指标:

Outcomes:

指标中文名:

操作者曲线下面积

指标类型:

主要指标

Outcome:

AUROC

Type:

Primary indicator

测量时间点:

测量方法:

Measure time point of outcome:

Measure method:

指标中文名:

灵敏度

指标类型:

次要指标

Outcome:

sensitivity

Type:

Secondary indicator

测量时间点:

测量方法:

Measure time point of outcome:

Measure method:

指标中文名:

特异度

指标类型:

次要指标

Outcome:

specificity

Type:

Secondary indicator

测量时间点:

测量方法:

Measure time point of outcome:

Measure method:

指标中文名:

阳性预测值

指标类型:

次要指标

Outcome:

positive predictive value

Type:

Secondary indicator

测量时间点:

测量方法:

Measure time point of outcome:

Measure method:

指标中文名:

阴性预测值

指标类型:

次要指标

Outcome:

negative predictive value

Type:

Secondary indicator

测量时间点:

测量方法:

Measure time point of outcome:

Measure method:

采集人体标本:

Collecting sample(s)
from participants:

标本中文名:

病理切片

组织:

Sample Name:

pathological slides

Tissue:

人体标本去向

使用后销毁  

说明

Fate of sample:

Destruction after use  

Note:

征募研究对象情况:

Recruiting status:

尚未开始

Not yet recruiting

年龄范围:

Participant age:

最小 Min age 18 years
最大 Max age 75 years

性别:

男女均可

Gender:

Both

随机方法(请说明由何人用什么方法产生随机序列):

Randomization Procedure (please state who generates the random number sequence and by what method):

none

是否公开试验完成后的统计结果:

Calculated Results after the Study Completed public access:

公开/Public

盲法:

Blinding:

试验完成后的统计结果(上传文件):

Calculated Results after
the Study Completed(upload file):

是否共享原始数据:

IPD sharing

是Yes

共享原始数据的方式(说明:请填入公开原始数据日期和方式,如采用网络平台,需填该网络平台名称和网址):

https://www.researchdata.org.cn/ 文章发表时共享数据

The way of sharing IPD”(include metadata and protocol, If use web-based public database, please provide the url):

https://www.researchdata.org.cn/ data sharing when manuscript published.

数据采集和管理(说明:数据采集和管理由两部分组成,一为病例记录表(Case Record Form, CRF),二为电子采集和管理系统(Electronic Data Capture, EDC),如ResMan即为一种基于互联网的EDC:

使用病例记录表采集和管理数据

Data collection and Management (A standard data collection and management system include a CRF and an electronic data capture:

CRF will be used for data collection and management

数据与安全监察委员会:

Data and Safety Monitoring Committee:

暂未确定/Not yet

注册人:

Name of Registration:

 2023-10-11 16:32:06