By making this distributed system, the user can: Get security where personal data is only accessible by patients. Get better and more reliable recommendations with a sequence of steps that could easily be followed by the patient. Save their ti
Recommendation System For Patients
By making this distributed system, the user can:
The methodology of this AI recommendation system is mentioned in the above section, as you can see the first module is the user login where a user is giving the answer to the questions which is followed by PHQ (Patient health questionnaire) strategy then it will move to the pre-trained model by using web API. Then the data will flow on the Scaling phase in which we find the depression and anxiety level with the help of the Hamilton Rating Scale. In we have two case studies which are a) When a user has no depression and anxiety level: In this case, we will not move forward to the next phase (I. Recommendation). Second one b) When a user has depression and anxiety level: In this case, we will move forward to the next phase (I. Recommendation). Forgiving recommendation to a patient. Then according to the given case studies as I mentioned earlier the data will go to the AI-based recommendation system which will further classify the type of recommendations as per user requirements (according to patient’s disease). As that we move to the second last part which is the Google teachable machine which is our main part of this project, it is a web-based tool that makes creating machine learning models fast, easy, and accessible to everyone. But there are still exits some requirements which is availability I discussed this on the Consequential of the website section which is Docker Container it is a virtual machine that provides a virtual environment to your system in order to provide computations and specific features into a package etc. So, by using the docker container we can deploy the ML model.
This system will be based on the following technologies:
Google Teachable Machine- is a web-based tool that makes creating machine learning models fast, easy, and accessible to everyone
Web API- is an interface between client-side (react.js) or teachable machine which is being provided google servers.
React.js - is a front-end JavaScript library for building user interfaces based on UI components. Which asks some relevant questions about patients’ mental disorders in order to give their data as an input to a model which is being served from Google servers.
Docker Container- is a virtual machine that provides a virtual environment to your system in order to provide computations and specific features into a package, etc. So, by using the docker container we can deploy the ML model.
| Item Name | Type | No. of Units | Per Unit Cost (in Rs) | Total (in Rs) |
|---|---|---|---|---|
| printing | Miscellaneous | 90 | 10 | 900 |
| printing | Miscellaneous | 90 | 20 | 1800 |
| Report Binding | Miscellaneous | 2 | 150 | 300 |
| AWS Docker Container | Equipment | 1 | 1100 | 1100 |
| Total in (Rs) | 4100 |
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