- Document Number:
20210335485
- Appl. No:
17/241426
- Application Filed:
April 27, 2021
- نبذة مختصرة :
In an embodiment, a method includes accessing, by a processor configured within a device, a central system that provides trained data and crowd-sourced data to be used to schedule a plurality of medical services and treatment options. A module is configured to receive the trained data and crowd-sourced data from the central system, and pass the trained data and crowd-sourced data to an application, and provide predictive capabilities to the application based on the trained data and the crowd-sourced data. The processor uses the application to provide scheduling intervals for a series of medical services and treatments at one or more medical stations in real-time. Another device is connected to the first device, wherein the other device is configured to access the application and identify the scheduling intervals, and request updates and changes to the scheduling intervals in real-time.
- Claim:
1. A method comprising: accessing, by a processor configured within a device, a central system that provides trained data and crowd-sourced data to be used to schedule a plurality of medical services and treatment options to one or more medical stations; accessing, by the processor configured within the device, a module that is configured to receive trained data and crowd-sourced data from the central system, and pass the trained data and crowd-sourced data to an application, and provide predictive capabilities to the application based on the trained data and the crowd sourced data; accessing, by the processor configured within the device, the application that receives the predictive capabilities from the module including the trained data and crowd-sourced data, and using the application to provide scheduling intervals for a series of medical services and treatments at one or more medical stations in real-time; and configuring another device to be connected to the first device, wherein the other device is configured to access the application and identify the scheduling intervals, and request updates and changes to the scheduling intervals in real-time.
- Claim:
2. The method of claim 1, wherein the predicting of the treatments is made continuously in real-time.
- Claim:
3. The method of claim 1, wherein the scheduling of necessary treatments is seen in real-time.
- Claim:
4. The method of claim 1, wherein the predictive capabilities include determining the prediction of treatment from past medical history.
- Claim:
5. The method of claim 1, further comprising: gathering anesthetic plans based on the treatment predicted for the one or more medical stations.
- Claim:
6. The method of claim 1, wherein the application uses the crowd-sourced data to predict the treatments for one or more medical stations.
- Claim:
7. The method of claim 1, wherein the application uses the trained data to schedule the treatments at one or more medical stations.
- Claim:
8. A method comprising: accessing, by a processor configured within a first device, a central system configured with trained data and crowd-sourced data, wherein the central system is connected to a module, wherein the central system is configured to transmit the trained data and crowd-sourced data to the module; accessing, by a second device connected to the first device, an application configured to receive the trained data and the crowd-sourced data from the module, wherein the module provides the application with predictive capabilities, wherein the application enables medical services to be performed at set intervals based on the trained data and crowd-sourced data, and wherein the second device is configured to identify through the application the set intervals with which the medical services are to be performed, wherein the second device requests changes and updates to the medical services through the application in real-time; and configuring a memory within at least one of the first device and the second device.
- Claim:
9. The method according to claim 8, wherein the trained data and crowd-sourced data includes data on anesthetic planning and treatments.
- Claim:
10. The method according to claim 8, wherein the trained data and crowd-sourced data includes data on past successful procedures.
- Claim:
11. The method according to claim 8, wherein the crowd-sourced data and trained data enables the first device and second device to receive updates in real-time.
- Claim:
12. The method according to claim 8, wherein the first device uses the application to make changes to the set intervals in real-time.
- Claim:
13. The method according to claim 8, wherein the second device notifies the first device of scheduling changes that need to be made.
- Claim:
14. The method according to claim 8, wherein the crowd-sourced data and the trained data enable the first device to access the application and make changes to the set intervals in real-time.
- Claim:
15. A system comprising: a processor configured within a first device, and configured to access a central system that provides trained data and crowd-sourced data to be used to schedule a plurality of medical services and treatment options to one or more medical stations; a module configured to receive the trained data and the crowd sourced data from the central system and pass the trained data and crowd-sourced data to an application, and provide predictive capabilities to the application based on the trained data and the crowd-sourced data, wherein the processor configured within the first device is configured to access the application that receives the trained data and the crowd-sourced data from the module, and use the application to provide scheduling intervals for medical-related treatments at one or more medical stations; a second device connected to the first device, wherein the second device is configured to access the application to identify the scheduling intervals for the medical-related treatments at the one or more medical stations, and communicate with the first device to request changes and updates to the scheduling intervals; and a memory configured within the first or second device.
- Claim:
16. The system of claim 15, wherein the first device accesses the application to obtain records of past medical history.
- Claim:
17. The system of claim 15, wherein the trained data and crowd-sourced data provide updates to anesthetic treatment plans in real-time.
- Claim:
18. The system of claim 15, wherein unforeseen events are communicated by the second device to the first device to enable the changes and updates to be provided.
- Claim:
19. The system of claim 15, wherein the first device receives changes and updates from the application in real-time due to the crowd-sourced data and the trained data.
- Claim:
20. The system of claim 15, wherein the crowd-sourced data and trained data include data of past anesthetic planning treatments that will be used for the medical-related treatments in the scheduling intervals.
- Current International Class:
16; 16; 16
- الرقم المعرف:
edspap.20210335485
No Comments.