Abstract: Embodiments of present disclosure discloses method and system for monitoring a patient in a care unit. For the monitoring, initially, a patient data from a monitoring device associated with the patient is retrieved. Bundling of the patient data using a micro-bundling method is performed to obtain corresponding one or more bundle features. Further, nearest neighbour parameter associated with the patient data is determined based on the corresponding one or more bundle features. The patient data is classified to be one of critical data and non-critical data based on one or more nearest neighbour parameters. The critical data and the non-critical data is provided to one or more attendants related to the patient. Figure 3
Claims:1. A method for monitoring a patient, the method comprising:
retrieving, by a patient monitoring system (101), a patient data (210) from a monitoring device associated with a patient (103) in a care unit;
performing, by the patient monitoring system (101), bundling of the patient data (210) using a micro-bundling method, to obtain one or more bundle features (211);
determining, by the patient monitoring system (101), nearest neighbour parameter (212) associated with the patient data (210), based on the one or more bundle features (211);
classifying, by the patient monitoring system (101), the patient data (210) to be one of critical data and non-critical data based on the nearest neighbour parameter (212); and
providing, by the patient monitoring system(101), the critical data and the non-critical data patient data (210)to one or more attendants (105) related to the patient, for monitoring the patient.
2. The method as claimed in claim 1 further comprising:
identifying, by the patient monitoring system (101), each of the one or more attendants (105) to be one of a primary attendant and a secondary attendant, based on one or more attendant parameters (213), using a fuzzy logic method; and
selecting, by the patient monitoring system (101), at least one of the primary attendant and the secondary attendant to provide at least one of the critical data and the non-critical data.
3. The method as claimed in claim 1, wherein the patient data (210) comprises one or more vital parameters retrieved from the patient at a predefined intervals of time.
4. The method as claimed in claim 1, wherein the one or more bundle features (211) of the patient data (210) are updated based on machine leaning technique.
5. The method as claimed in claim 4, wherein the one or more bundle features (211) comprises at least one of locality data, boundary data, recency data, instances data, class label data, error count data, splitting error threshold data, initial time stamp data and performance threshold data, associated with the patient data (210).
6. The method as claimed in claim 1, wherein the nearest neighbour parameter (212) comprises Euclidean distance associated with the patient data (210) and centroid (214) calculated from the one or more bundles features.
7. A patient monitoring system (101) for monitoring a patient (103), the patient monitoring system (101) comprises:
a processor (107); and
a memory communicatively coupled to the processor (107), wherein the memory stores processor-executable instructions, which, on execution, cause the processor (107) to:
retrieve a patient data (210) from a monitoring device (104) associated with a patient (103) in a care unit;
perform bundling of the patient data (210) using a micro-bundling method, to obtain one or more bundle features (211);
determine nearest neighbour parameter (212) associated with the patient data (210), based on the one or more bundle features (211);
classify the patient data (210) to be one of critical data and non-critical data based on the nearest neighbour parameter(212); and
provide the critical data and the non-critical data to one or more attendants related to the patient (103), for monitoring the patient (103).
8. The patient monitoring system (101) as claimed in claim 7 further comprises the processor (107) configured to:
identify each of the one or more attendants to be one of a primary attendant and a secondary attendant, based on one or more attendant parameters (213), using a fuzzy logic method; and
select at least one of the primary attendant and the secondary attendant to provide at least one of the critical data and the non-critical data.
9. The patient monitoring system (101) as claimed in claim 7, wherein the patient data (210) comprises one or more vital parameters retrieved from the patient (103) at a predefined intervals of time.
10. The patient monitoring system (101) as claimed in claim 7, wherein the one or more bundle features (211) of the patient data (210) are updated based on machine leaning technique.
11. The patient monitoring system (101) as claimed in claim 10, wherein the one or more bundle features (211) comprises at least one of locality data, boundary data, recency data, instances data, class label data, error count data, splitting error threshold data, initial time stamp data and performance threshold data, associated with the patient data (210).
12. The patient monitoring system (101) as claimed in claim 7, wherein the nearest neighbour parameter(212) comprises Euclidean distance associated with the patient data (210) and centroid (214) calculated from the one or more bundles features.
Dated this 29th day of December, 2017
R Ramya Rao
Of K&S Partners
Agent for the Applicant
IN/PA-1607
, Description:TECHNICAL FIELD
The present subject matter is related in general to healthcare technology, more particularly, but not exclusively to a system and method for monitoring a patient in a care unit using micro-bundling method.
| # | Name | Date |
|---|---|---|
| 1 | 201741047345-STATEMENT OF UNDERTAKING (FORM 3) [29-12-2017(online)].pdf | 2017-12-29 |
| 2 | 201741047345-REQUEST FOR EXAMINATION (FORM-18) [29-12-2017(online)].pdf | 2017-12-29 |
| 3 | 201741047345-REQUEST FOR CERTIFIED COPY [29-12-2017(online)].pdf | 2017-12-29 |
| 4 | 201741047345-POWER OF AUTHORITY [29-12-2017(online)].pdf | 2017-12-29 |
| 5 | 201741047345-FORM 18 [29-12-2017(online)].pdf | 2017-12-29 |
| 6 | 201741047345-FORM 1 [29-12-2017(online)].pdf | 2017-12-29 |
| 7 | 201741047345-DRAWINGS [29-12-2017(online)].pdf | 2017-12-29 |
| 8 | 201741047345-DECLARATION OF INVENTORSHIP (FORM 5) [29-12-2017(online)].pdf | 2017-12-29 |
| 9 | 201741047345-COMPLETE SPECIFICATION [29-12-2017(online)].pdf | 2017-12-29 |
| 10 | 201741047345-Proof of Right (MANDATORY) [23-04-2018(online)].pdf | 2018-04-23 |
| 11 | Correspondence by Agent_Form1_26-04-2018.pdf | 2018-04-26 |
| 12 | 201741047345-PETITION UNDER RULE 137 [11-05-2021(online)].pdf | 2021-05-11 |
| 13 | 201741047345-Information under section 8(2) [11-05-2021(online)].pdf | 2021-05-11 |
| 14 | 201741047345-FORM 3 [11-05-2021(online)].pdf | 2021-05-11 |
| 15 | 201741047345-FORM 3 [11-05-2021(online)]-1.pdf | 2021-05-11 |
| 16 | 201741047345-FER_SER_REPLY [11-05-2021(online)].pdf | 2021-05-11 |
| 17 | 201741047345-FER.pdf | 2021-10-17 |
| 18 | 201741047345-PatentCertificate15-09-2023.pdf | 2023-09-15 |
| 19 | 201741047345-IntimationOfGrant15-09-2023.pdf | 2023-09-15 |
| 20 | 201741047345-PROOF OF ALTERATION [20-12-2023(online)].pdf | 2023-12-20 |
| 1 | Searchstrategy_201741047345_SERAE_23-06-2021.pdf |
| 2 | Searchstrategy_201741047345E_05-11-2020.pdf |