UMIN-CTR Clinical Trial

Unique ID issued by UMIN UMIN000045265
Receipt number R000051703
Scientific Title Retrospective artificial intelligence analysis to predict ventilatory impairment from ECG data
Date of disclosure of the study information 2021/08/25
Last modified on 2021/08/25 17:37:32

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Basic information

Public title

Retrospective artificial intelligence analysis to predict ventilatory impairment from ECG data

Acronym

Retrospective artificial intelligence analysis to predict ventilatory impairment from ECG data

Scientific Title

Retrospective artificial intelligence analysis to predict ventilatory impairment from ECG data

Scientific Title:Acronym

Retrospective artificial intelligence analysis to predict ventilatory impairment from ECG data

Region

Japan


Condition

Condition

Individual who has undergone examinations

Classification by specialty

Pneumology

Classification by malignancy

Others

Genomic information

NO


Objectives

Narrative objectives1

Chronic obstructive pulmonary disease (COPD) is the third leading cause of death in the world, and respiratory function tests are essential for the diagnosis of COPD to confirm obstructive respiratory impairment (one-second rate <70%). However, in order to perform a respiratory function test, a machine and a well-trained technician must be prepared.For this reason, COPD is difficult to diagnose in non-specialized facilities, and it is estimated that the majority of patients are undiagnosed. The same problem also arises for interstitial pneumonia. The purpose of this study is to build an algorithm to predict ventilation disorders from ECG data using machine learning.

Basic objectives2

Others

Basic objectives -Others

Diagnosis

Trial characteristics_1


Trial characteristics_2


Developmental phase



Assessment

Primary outcomes

AUC values of algorithms for predicting ventilation failure from ECG data.

Key secondary outcomes



Base

Study type

Observational


Study design

Basic design


Randomization


Randomization unit


Blinding


Control


Stratification


Dynamic allocation


Institution consideration


Blocking


Concealment



Intervention

No. of arms


Purpose of intervention


Type of intervention


Interventions/Control_1


Interventions/Control_2


Interventions/Control_3


Interventions/Control_4


Interventions/Control_5


Interventions/Control_6


Interventions/Control_7


Interventions/Control_8


Interventions/Control_9


Interventions/Control_10



Eligibility

Age-lower limit

20 years-old <=

Age-upper limit


Not applicable

Gender

Male and Female

Key inclusion criteria

Patients who underwent both electrocardiography and respiratory function tests at Yokohama City University Hospital within a one-year interval from 2010 to the date of Ethics Committee approval will be eligible. Patients will be recruited regardless of underlying disease, gender, or medical specialty. Age should be 20 years or older.

Key exclusion criteria

Age < 20 year old

Target sample size

100000


Research contact person

Name of lead principal investigator

1st name Nobuyuki
Middle name
Last name Horita

Organization

Yokohama City University Hospital

Division name

Department of pulmonology

Zip code

236-0004

Address

3-9, Kanazawa, Fukuura, Yokohama

TEL

0457872800

Email

horitano@yokohama-cu.ac.jp


Public contact

Name of contact person

1st name Nobuyuki
Middle name
Last name Horita

Organization

Yokohama City University Hospital

Division name

Department of pulmonology

Zip code

236-0004

Address

3-9, Kanazawa, Fukuura, Yokohama

TEL

0457872800

Homepage URL


Email

horitano@yokohama-cu.ac.jp


Sponsor or person

Institute

Yokohama City University Hospital

Institute

Department

Personal name



Funding Source

Organization

Yokohama City University Hospital

Organization

Division

Category of Funding Organization

Other

Nationality of Funding Organization



Other related organizations

Co-sponsor


Name of secondary funder(s)



IRB Contact (For public release)

Organization

Yokohama City University Hospital

Address

3-9, Fukuura, Kanazawa, Yokohama

Tel

045-787-2800

Email

horitano@yokohama-cu.ac.jp


Secondary IDs

Secondary IDs

NO

Study ID_1


Org. issuing International ID_1


Study ID_2


Org. issuing International ID_2


IND to MHLW



Institutions

Institutions



Other administrative information

Date of disclosure of the study information

2021 Year 08 Month 25 Day


Related information

URL releasing protocol


Publication of results

Unpublished


Result

URL related to results and publications


Number of participants that the trial has enrolled


Results


Results date posted


Results Delayed


Results Delay Reason


Date of the first journal publication of results


Baseline Characteristics


Participant flow


Adverse events


Outcome measures


Plan to share IPD


IPD sharing Plan description



Progress

Recruitment status

Preinitiation

Date of protocol fixation

2021 Year 08 Month 25 Day

Date of IRB


Anticipated trial start date

2021 Year 10 Month 01 Day

Last follow-up date

2022 Year 10 Month 01 Day

Date of closure to data entry


Date trial data considered complete


Date analysis concluded



Other

Other related information

We will analyze 50,000 data of all adult patients who underwent electrocardiography and respiratory function tests at intervals of one year or less between 2010 and 2021 at Yokohama City University Hospital (hereinafter referred to as "the hospital"). Since the analysis will be conducted regardless of the department, a wide variety of patients will be included in the analysis, including respiratory medicine patients with various respiratory diseases, cardiology patients with various cardiac diseases, and patients with no conspicuous abnormalities in cardiopulmonary function who underwent ECG and respiratory function tests as a routine procedure before surgery. The system is linked to our electronic medical record.
The ECG and respiratory function data of the relevant patients are extracted from the physiological function test data storage space linked to the hospital's electronic medical record. (The ECG data uses the potential, duration, and axis angle of each wave for each induction calculated by an automatic analysis device (model number ECG-1550, Nihon Kohden).
Machine learning using deep learning is performed using the Keras library, which runs in the Python language. We divided the data of about 50,000 cases of the hospital into 30,000 cases of the development set, 10,000 cases of the validation set, and 10,000 cases of the test set, and adjusted hyperparameters such as layers of deep learning, number of nodes, and various settings to prevent overlearning in all two sets. We will continue to use the data from the back one for the test set to finally evaluate the performance of the algorithm.


Management information

Registered date

2021 Year 08 Month 25 Day

Last modified on

2021 Year 08 Month 25 Day



Link to view the page

Value
https://center6.umin.ac.jp/cgi-open-bin/ctr_e/ctr_view.cgi?recptno=R000051703


Research Plan
Registered date File name

Research case data specifications
Registered date File name

Research case data
Registered date File name