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International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 07 Issue: 03 | Mar 2020 www.irjet.net p-ISSN: 2395-0072
© 2020, IRJET | Impact Factor value: 7.34 | ISO 9001:2008 Certified Journal | Page 542
TERM BASED PERSONALIZATION OF FEATURE SELECTION OF AUTO FILLING
PATIENT TRANSITION
S. Ramakrishnan1, A. Stephy2, N. Swarnanjali3, S. Tina4
1Head of the dept, Dept. of Information Technology, Jeppiaar SRR Engineering College, Chennai.
2,3,4Final Year Student, Dept. of Information Technology, Jeppiaar SRR Engineering College, Chennai.
---------------------------------------------------------------------***----------------------------------------------------------------------
Abstract :- Hospital is currentlyusingamanualsystem forthe
management and maintenance of critical information of a
patient. Forms are often lost in transit between departments
requiring a comprehensive auditing process tomakesurethat
no vital information is lost. Multiple copies of the same
information exist in the hospital and may lead to
inconsistencies in data in various data sources. A significant
part of the operation of any hospitals involves thatacquisition
Management and timely retrieval of great volumes of
information. We proposed that representation learning has
become a rapidly growing of clinicalhandoverandauto-filling
areas. In this paper, we present a novelfeatureselectionmodel
which is capable of selectingterm-basedpersonalizedfeatures
for classification. First, each feature subset is evaluated by a
term-feature probabilistic relevance model. Afterwards, the
feature subset with the highest probabilistic value will be
assigned for the given term during classification. Since
exhaustive evaluating all the possible feature subsets is
computationally intensive, we apply a strategy to generate
candidate feature subsets based on mutual information.
Traditional methods usually treat all terms with same feature
sets, such that performance can be damaged when noisy
information is brought via wrong features for a given term.
Different from traditional feature selection methods,
Conditional Random Field (CRF) model can automatically
select the most relevant features for the given term, instead of
using the same features for all terms in a learning machine. In
this way, we furthest eliminate the negative impact of noisy
information. Our main focus is on government hospitals.
Though it is already used in certain private hospitals, it helps
to analyses the data and schedules according to the priorityof
the data sets given by patients.
1. INTRODUCTION
Automation is everywhere emerging all over in the real-
world applications. It is not only used inthemedical fieldbut
also used in the organization to maintain and manage the
business processes. In the Human Resource operations,
interview process can be organized in an automated way by
using this methodology. In robotics application, the
automation is majorly used for the content filling and other
purposes. This will free up the human resource overhead
and the process which requires much human power will be
minimized. The organization in which the process is
managed by human entity, this proposed method can
manage the organization with the usage of minimized
efforts. This paper addressed a clinical informationretrieval
challenge to support clinicians in healthcare domain. We
propose a term personalized feature selection model for
clinical handover form auto-filling task. We show that our
proposed model outperforms SVM, CRF and several
ensemble methods. We also present that our model is stable
and robust by comparing it with several feature selection
methods. Electronic handover form with standardized and
structured content provides us with a good mechanism to
improve quality and safetyatshiftchanges.CHFAcanrelease
lots of clinicians’ time from documentationtocaretreatment
and medical plan settings, sincetherearevariouscontentsin
the handover form to be filled.
2. RELATED WORKS
Taylor, Joseph G, Sharmanska, Viktoriia, Kersting, Kristian,
Weir, David and Quadrianto, Novi,” Learning using
Unselected Features (LUFe)”-25th International Joint
Conference on Artificial Intelligence, volume.16, July 2016.
Feature selection has been studied in machine learning and
data mining for many years, and is a valuable way to
improve classification accuracy while reducing model
complexity. Two main classes of feature selection methods -
filter and wrapper - discard those features which are not
selected, and do not consider them in the predictive model.
We propose that these unselected features may instead be
used as an additional source of information at traintime.We
describe a strategy called Learning using Unselected
Features (LUFe) that allowsselectedandunselectedfeatures
to serve different functions in classification. In this
framework, selected features are used directly to set the
decision boundary, and unselected features are utilized in a
secondary role, with no additional cost at test time. Our
empirical results on 49 textual datasets show that LUFe can
improve classification performance in comparison with
standard wrapper and filter feature selection.
Yun He, Qinmin Hu, Yang Song, Liang He,” Estimating
Probability Density of Content Types for Promoting Medical
Records Search”-European Conference on Information
Retrieval, Volume.9626, March 2016. Disease and symptom
in medical records tend to appear in different content types:
positive, negative, family history and the others. Traditional
information retrieval systems dependingonkeywordmatch
are often adversely affected by the content types. In this
paper, we propose a novel learning approach utilizing the
content types as features to improve the medical records
search. Particularly, the different contents from the medical
records are identified using a Bayesian-based classification
method. Then, we introduce our type-based weighting
function to take advantage of the content types, in which the
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 07 Issue: 03 | Mar 2020 www.irjet.net p-ISSN: 2395-0072
© 2020, IRJET | Impact Factor value: 7.34 | ISO 9001:2008 Certified Journal | Page 543
weights of the content types are automatically calculated by
estimating the probability density functions in the
documents. Finally, we evaluate the approach on the TREC
2011 and 2012 Medical Records data sets, in which our
experimental results show that our approach is promising
and superior.
Hanna Suominen, Liyuan Zhou, Leif Hanlen, Gabreila
Ferraro,” Benchmarking Clinical Speech Recognition and
Information Extraction: New Data, Methods, and
Evaluations”- JMIR Med Inform, volume.3,April 2015.Overa
tenth of preventable adverse events in health care are
caused by failures in information flow. These failures are
tangible in clinical handover; regardless of good verbal
handover, from two-thirds to all of this information is lost
after 3-5 shifts if notes are taken by hand, or not at all.
Speech recognition and information extraction provide a
way to fill out a handover form for clinical proofingandsign-
off. The objective of the study was to provide a recorded
spoken handover, annotated verbatim transcriptions, and
evaluations to support research in spoken and written
natural language processing forfillingouta clinical handover
form. This dataset is based on synthetic patient profiles,
thereby avoiding ethical and legal restrictions, while
maintaining efficacy for research in speech-to-text
conversion and information extraction, based on realistic
clinical scenarios. We also introduce a Web app to
demonstrate the system design and workflow. We
experiment with Dragon Medical 11.0forspeechrecognition
and CRF++ for information extraction. To compute features
for information extraction, we also apply Core NLP,
Multimap, and onto server. Our evaluation uses cross-
validation techniques to measure processing correctness.
The data provided were a simulationofnursinghandover,as
recorded using a mobile device, built from simulated patient
records and handover scripts, spoken by an Australian
registered nurse. Speech recognition recognized 5276 of
7277 words in our 100 test documents correctly. We
considered 50 mutually exclusive categories in information
extraction and achieved the F1 (i.e., the harmonic mean of
Precision and Recall) of 0.86 in the category for irrelevant
text and the macro-averaged F1 of 0.70 over the remaining
35 nonempty categories of the form in our 101 test
documents. The significance of this study hinges on opening
our data, together withtherelatedperformancebenchmarks
and some processing software, to the research and
developmentcommunityfor studyingclinical documentation
and language-processing. The data are used in the CLEF
Health 2015 evaluation laboratory for a shared task on
speech recognition.
3. PROPOSED SYSTEM
In the proposed system, automated filling outpatientform is
introduced. By this application, the patients do not have a
need for waiting in the queue for consulting a doctor or does
not need much of manpower for maintaining the patients
and record of the patient details. This system not only
reduces the manpower but also propose a priority to the
patients who need emergency consultation with the doctor.
Additionally, we have an online consultation option and
booking an appointment with the doctor. By this scheme we
need not go to the hospital thereby we can directly book an
appointment and consult the doctor according to the
patient’s condition. The main purpose of the application is
having online appointment with the doctor andconsultation
with the doctor could be made via online chat. This system
would identify the patient’s critical stage and accordingly
would set the priority to consult the doctors. Electronic
handover form with standardized and structured content
provides us with a good mechanism to improve quality and
safety at shift changes. CHFA can release lots of clinicians’
time from documentation to care treatment and medical
plan settings, since there are various contents in the
handover form to be filled.
4. PROPOSED ARCHITECTURE
5. MODULES AND DESCRIPTION
5.1. ADMIN AND USER
In this module, the admin can view the list of users who all
registered. In this, the admin can view the user’sdetailssuch
as, user name, email, address and admin authorizetheusers.
Large number of users will be accessing this platform. User
should register before doing any operations. Once user
registers, their details will be stored to the database. After
completing the registration successfully, he/she has tologin
by using his/her own authorized username and password.
Once Login is successful user will do some operations like
view profile, add category, book appointment, to consult
doctors and order medicine, to consult doctors via text
message, and book the specialist.
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 07 Issue: 03 | Mar 2020 www.irjet.net p-ISSN: 2395-0072
© 2020, IRJET | Impact Factor value: 7.34 | ISO 9001:2008 Certified Journal | Page 544
5.2. CONSULTANCY AND MAKE AN APPOINTMENT
The doctors in the hospitals will automatically carry out the
procedures to give treatment to the patients in ill condition
and will start taking steps to cure in terms of diagnosis. The
work of the consultant goes beyond caring for patients. If
you have an appointment with someone, you have arranged
to see them at a time, usually in connection with their work
or for a serious purpose.
5.3. ONLINE CONSULTANCY
An online doctor consultation is convenient and easy for
those who live in remote areas and have busy schedules and
those who are not in a situation to meet the doctor directly.
By using a text conferencing platform in smartphone apps
and online management systems, doctors can connect with
patients through online and diagnose them in a kindly
manner. A consultation is a professional advice to patient in
order to diagnose their disease. online consultation has
made it easy for both the doctors and patients nowadays in
their busy schedule.
5.4. REGULAR CHECKUPANDOUTPATIENTTREATMENT
Regular health issues help in finding the early signs of a
patient and helps in preventing it from the initial stage.
Finding signs in the early stage can help you curethedisease
in an effective and efficient manner. Many factors, like your
age, health, case history and lifestyle choices, impact onhow
often you would like check-ups. An outpatient is someone
who goes to a hospital for treatment but doesn't stay
overnight. Hospital benefits includereimbursementfor both
inpatient and outpatientmedical aidexpenses.Anoutpatient
is someone who goes ta hospital for treatment but does not
stay overnight. Outpatient cover refers to diagnostic tests,
consultations and procedures that don't requirea single bed
overnight. Things like biopsy, X-rays, MRI and CT scans are
all samples of outpatient treatments. You can tweak your
outpatient cover to form your plan more basic or
comprehensive.
5.5. ORDERING MEDICINE THROUGH ONLINE
A medication order is written directions provided by a
prescribing practitioner for a selected medication to be
administered to a private. And we can consult the doctor in
online treatment and ordered medicine which is suggest by
doctors we purchase the tablets by use of these modules.
These orders can be typed, handwritten, preprinted, verbal,
or entered into the computer. Emergency orders or as-
required orders are called as PRN orders, and these
medications are given only needed. Signs and symptoms for
the emergencyordersincludescoughing,sneezing,tiredness,
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 07 Issue: 03 | Mar 2020 www.irjet.net p-ISSN: 2395-0072
© 2020, IRJET | Impact Factor value: 7.34 | ISO 9001:2008 Certified Journal | Page 545
headache, earache, etc. In addition to it, it requires a PRN
protocol to administer the medication.
6. CONCLUSION
Hereby we have created a project for the patients in
government hospital to make an outpatient appointment,
consult doctor through online, book appointments through
online and we can get medicine from thespecialized doctors.
The project also analyses the health conditions of each
patient and gives priority to those who needs to be treated
first.
7. FUTURE ENHANCEMENT
In this paper we proposed only the patient who will able to
come the hospitals, or normal people easy to use the
application. Not only used for online consultation and also
used for ordering the medicines for patients’ purpose. This
application is used for physically challenged people to
consult the doctor in online also there is no needforcreating
crowd collision in government hospitals. In future there is
possible to include the translation device for the other
language people to utilize the auto filling methodology.
REFERENCES
[1]. Taylor, Joseph G, Sharmanska, Viktoriia, Kersting,
Kristian, Weir, David and Quadrianto, Novi,” Learning using
Unselected Features (LUFe)”-25th International Joint
Conference on Artificial Intelligence, volume.16, July 2016.
[2]. Yun He, Qinmin Hu, Yang Song, Liang He,” Estimating
Probability Density of Content Types for Promoting Medical
Records Search”-European Conference on Information
Retrieval, Volume.9626, March 2016.
[3]. Hanna Suominen, Liyuan Zhou, Leif Hanlen, Gabreila
Ferraro,” Benchmarking Clinical Speech Recognition and
Information Extraction: New Data, Methods, and
Evaluations”- JMIR Med Inform, volume.3, April 2015.
[4]. Maree Johnson, Samuel Lapkin, Vanessa Long, Paula
Sanchez,” A systematic review of speech recognition
technology in health care”- BMC medical informatics and
decision making, volume.14, October 2014.
[5]. Linda Dawson, Maree Johnson, Hanna Suominen, Jim
Basilakis,Paula Sanchez, Dominique Estival, Barbara
Kelly , Leif Hanlen, “A usability framework for speech
recognition technologies in clinical handover: A pre-
implementation study”- Journal of Medical
Systems,volume.38,May 2014.
[6]. Girish Chandrasekar, Ferat Sahin,” A survey on feature
selection methods”- Computers & Electrical
Engineering,volume.40,January 2014.
[7]. Maree Johnson, Paula Sanchez, H Suominen,” Comparing
nursing handover and documentation: Forming one set of
patient information”-International Nursing Review,
volume.61, December 2013.
[8]. Jenelle Matic, Patricia M Davidson, Yenna Salamonson,”
Bringing patient safety to the forefront through structured
computerizationduringclinical handover”-Journal ofClinical
Nursing, volume.20, January 2011.
[9]. Duong Thuy Tran, Maree Johnson,” Classifying nursing
errors in clinical management within an Australian
hospital”-International Nursing
Review,Volume.57,December 2010.

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IRJET - Term based Personalization of Feature Selection of Auto Filling Patient Transition

  • 1. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 07 Issue: 03 | Mar 2020 www.irjet.net p-ISSN: 2395-0072 © 2020, IRJET | Impact Factor value: 7.34 | ISO 9001:2008 Certified Journal | Page 542 TERM BASED PERSONALIZATION OF FEATURE SELECTION OF AUTO FILLING PATIENT TRANSITION S. Ramakrishnan1, A. Stephy2, N. Swarnanjali3, S. Tina4 1Head of the dept, Dept. of Information Technology, Jeppiaar SRR Engineering College, Chennai. 2,3,4Final Year Student, Dept. of Information Technology, Jeppiaar SRR Engineering College, Chennai. ---------------------------------------------------------------------***---------------------------------------------------------------------- Abstract :- Hospital is currentlyusingamanualsystem forthe management and maintenance of critical information of a patient. Forms are often lost in transit between departments requiring a comprehensive auditing process tomakesurethat no vital information is lost. Multiple copies of the same information exist in the hospital and may lead to inconsistencies in data in various data sources. A significant part of the operation of any hospitals involves thatacquisition Management and timely retrieval of great volumes of information. We proposed that representation learning has become a rapidly growing of clinicalhandoverandauto-filling areas. In this paper, we present a novelfeatureselectionmodel which is capable of selectingterm-basedpersonalizedfeatures for classification. First, each feature subset is evaluated by a term-feature probabilistic relevance model. Afterwards, the feature subset with the highest probabilistic value will be assigned for the given term during classification. Since exhaustive evaluating all the possible feature subsets is computationally intensive, we apply a strategy to generate candidate feature subsets based on mutual information. Traditional methods usually treat all terms with same feature sets, such that performance can be damaged when noisy information is brought via wrong features for a given term. Different from traditional feature selection methods, Conditional Random Field (CRF) model can automatically select the most relevant features for the given term, instead of using the same features for all terms in a learning machine. In this way, we furthest eliminate the negative impact of noisy information. Our main focus is on government hospitals. Though it is already used in certain private hospitals, it helps to analyses the data and schedules according to the priorityof the data sets given by patients. 1. INTRODUCTION Automation is everywhere emerging all over in the real- world applications. It is not only used inthemedical fieldbut also used in the organization to maintain and manage the business processes. In the Human Resource operations, interview process can be organized in an automated way by using this methodology. In robotics application, the automation is majorly used for the content filling and other purposes. This will free up the human resource overhead and the process which requires much human power will be minimized. The organization in which the process is managed by human entity, this proposed method can manage the organization with the usage of minimized efforts. This paper addressed a clinical informationretrieval challenge to support clinicians in healthcare domain. We propose a term personalized feature selection model for clinical handover form auto-filling task. We show that our proposed model outperforms SVM, CRF and several ensemble methods. We also present that our model is stable and robust by comparing it with several feature selection methods. Electronic handover form with standardized and structured content provides us with a good mechanism to improve quality and safetyatshiftchanges.CHFAcanrelease lots of clinicians’ time from documentationtocaretreatment and medical plan settings, sincetherearevariouscontentsin the handover form to be filled. 2. RELATED WORKS Taylor, Joseph G, Sharmanska, Viktoriia, Kersting, Kristian, Weir, David and Quadrianto, Novi,” Learning using Unselected Features (LUFe)”-25th International Joint Conference on Artificial Intelligence, volume.16, July 2016. Feature selection has been studied in machine learning and data mining for many years, and is a valuable way to improve classification accuracy while reducing model complexity. Two main classes of feature selection methods - filter and wrapper - discard those features which are not selected, and do not consider them in the predictive model. We propose that these unselected features may instead be used as an additional source of information at traintime.We describe a strategy called Learning using Unselected Features (LUFe) that allowsselectedandunselectedfeatures to serve different functions in classification. In this framework, selected features are used directly to set the decision boundary, and unselected features are utilized in a secondary role, with no additional cost at test time. Our empirical results on 49 textual datasets show that LUFe can improve classification performance in comparison with standard wrapper and filter feature selection. Yun He, Qinmin Hu, Yang Song, Liang He,” Estimating Probability Density of Content Types for Promoting Medical Records Search”-European Conference on Information Retrieval, Volume.9626, March 2016. Disease and symptom in medical records tend to appear in different content types: positive, negative, family history and the others. Traditional information retrieval systems dependingonkeywordmatch are often adversely affected by the content types. In this paper, we propose a novel learning approach utilizing the content types as features to improve the medical records search. Particularly, the different contents from the medical records are identified using a Bayesian-based classification method. Then, we introduce our type-based weighting function to take advantage of the content types, in which the
  • 2. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 07 Issue: 03 | Mar 2020 www.irjet.net p-ISSN: 2395-0072 © 2020, IRJET | Impact Factor value: 7.34 | ISO 9001:2008 Certified Journal | Page 543 weights of the content types are automatically calculated by estimating the probability density functions in the documents. Finally, we evaluate the approach on the TREC 2011 and 2012 Medical Records data sets, in which our experimental results show that our approach is promising and superior. Hanna Suominen, Liyuan Zhou, Leif Hanlen, Gabreila Ferraro,” Benchmarking Clinical Speech Recognition and Information Extraction: New Data, Methods, and Evaluations”- JMIR Med Inform, volume.3,April 2015.Overa tenth of preventable adverse events in health care are caused by failures in information flow. These failures are tangible in clinical handover; regardless of good verbal handover, from two-thirds to all of this information is lost after 3-5 shifts if notes are taken by hand, or not at all. Speech recognition and information extraction provide a way to fill out a handover form for clinical proofingandsign- off. The objective of the study was to provide a recorded spoken handover, annotated verbatim transcriptions, and evaluations to support research in spoken and written natural language processing forfillingouta clinical handover form. This dataset is based on synthetic patient profiles, thereby avoiding ethical and legal restrictions, while maintaining efficacy for research in speech-to-text conversion and information extraction, based on realistic clinical scenarios. We also introduce a Web app to demonstrate the system design and workflow. We experiment with Dragon Medical 11.0forspeechrecognition and CRF++ for information extraction. To compute features for information extraction, we also apply Core NLP, Multimap, and onto server. Our evaluation uses cross- validation techniques to measure processing correctness. The data provided were a simulationofnursinghandover,as recorded using a mobile device, built from simulated patient records and handover scripts, spoken by an Australian registered nurse. Speech recognition recognized 5276 of 7277 words in our 100 test documents correctly. We considered 50 mutually exclusive categories in information extraction and achieved the F1 (i.e., the harmonic mean of Precision and Recall) of 0.86 in the category for irrelevant text and the macro-averaged F1 of 0.70 over the remaining 35 nonempty categories of the form in our 101 test documents. The significance of this study hinges on opening our data, together withtherelatedperformancebenchmarks and some processing software, to the research and developmentcommunityfor studyingclinical documentation and language-processing. The data are used in the CLEF Health 2015 evaluation laboratory for a shared task on speech recognition. 3. PROPOSED SYSTEM In the proposed system, automated filling outpatientform is introduced. By this application, the patients do not have a need for waiting in the queue for consulting a doctor or does not need much of manpower for maintaining the patients and record of the patient details. This system not only reduces the manpower but also propose a priority to the patients who need emergency consultation with the doctor. Additionally, we have an online consultation option and booking an appointment with the doctor. By this scheme we need not go to the hospital thereby we can directly book an appointment and consult the doctor according to the patient’s condition. The main purpose of the application is having online appointment with the doctor andconsultation with the doctor could be made via online chat. This system would identify the patient’s critical stage and accordingly would set the priority to consult the doctors. Electronic handover form with standardized and structured content provides us with a good mechanism to improve quality and safety at shift changes. CHFA can release lots of clinicians’ time from documentation to care treatment and medical plan settings, since there are various contents in the handover form to be filled. 4. PROPOSED ARCHITECTURE 5. MODULES AND DESCRIPTION 5.1. ADMIN AND USER In this module, the admin can view the list of users who all registered. In this, the admin can view the user’sdetailssuch as, user name, email, address and admin authorizetheusers. Large number of users will be accessing this platform. User should register before doing any operations. Once user registers, their details will be stored to the database. After completing the registration successfully, he/she has tologin by using his/her own authorized username and password. Once Login is successful user will do some operations like view profile, add category, book appointment, to consult doctors and order medicine, to consult doctors via text message, and book the specialist.
  • 3. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 07 Issue: 03 | Mar 2020 www.irjet.net p-ISSN: 2395-0072 © 2020, IRJET | Impact Factor value: 7.34 | ISO 9001:2008 Certified Journal | Page 544 5.2. CONSULTANCY AND MAKE AN APPOINTMENT The doctors in the hospitals will automatically carry out the procedures to give treatment to the patients in ill condition and will start taking steps to cure in terms of diagnosis. The work of the consultant goes beyond caring for patients. If you have an appointment with someone, you have arranged to see them at a time, usually in connection with their work or for a serious purpose. 5.3. ONLINE CONSULTANCY An online doctor consultation is convenient and easy for those who live in remote areas and have busy schedules and those who are not in a situation to meet the doctor directly. By using a text conferencing platform in smartphone apps and online management systems, doctors can connect with patients through online and diagnose them in a kindly manner. A consultation is a professional advice to patient in order to diagnose their disease. online consultation has made it easy for both the doctors and patients nowadays in their busy schedule. 5.4. REGULAR CHECKUPANDOUTPATIENTTREATMENT Regular health issues help in finding the early signs of a patient and helps in preventing it from the initial stage. Finding signs in the early stage can help you curethedisease in an effective and efficient manner. Many factors, like your age, health, case history and lifestyle choices, impact onhow often you would like check-ups. An outpatient is someone who goes to a hospital for treatment but doesn't stay overnight. Hospital benefits includereimbursementfor both inpatient and outpatientmedical aidexpenses.Anoutpatient is someone who goes ta hospital for treatment but does not stay overnight. Outpatient cover refers to diagnostic tests, consultations and procedures that don't requirea single bed overnight. Things like biopsy, X-rays, MRI and CT scans are all samples of outpatient treatments. You can tweak your outpatient cover to form your plan more basic or comprehensive. 5.5. ORDERING MEDICINE THROUGH ONLINE A medication order is written directions provided by a prescribing practitioner for a selected medication to be administered to a private. And we can consult the doctor in online treatment and ordered medicine which is suggest by doctors we purchase the tablets by use of these modules. These orders can be typed, handwritten, preprinted, verbal, or entered into the computer. Emergency orders or as- required orders are called as PRN orders, and these medications are given only needed. Signs and symptoms for the emergencyordersincludescoughing,sneezing,tiredness,
  • 4. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 07 Issue: 03 | Mar 2020 www.irjet.net p-ISSN: 2395-0072 © 2020, IRJET | Impact Factor value: 7.34 | ISO 9001:2008 Certified Journal | Page 545 headache, earache, etc. In addition to it, it requires a PRN protocol to administer the medication. 6. CONCLUSION Hereby we have created a project for the patients in government hospital to make an outpatient appointment, consult doctor through online, book appointments through online and we can get medicine from thespecialized doctors. The project also analyses the health conditions of each patient and gives priority to those who needs to be treated first. 7. FUTURE ENHANCEMENT In this paper we proposed only the patient who will able to come the hospitals, or normal people easy to use the application. Not only used for online consultation and also used for ordering the medicines for patients’ purpose. This application is used for physically challenged people to consult the doctor in online also there is no needforcreating crowd collision in government hospitals. In future there is possible to include the translation device for the other language people to utilize the auto filling methodology. REFERENCES [1]. Taylor, Joseph G, Sharmanska, Viktoriia, Kersting, Kristian, Weir, David and Quadrianto, Novi,” Learning using Unselected Features (LUFe)”-25th International Joint Conference on Artificial Intelligence, volume.16, July 2016. [2]. Yun He, Qinmin Hu, Yang Song, Liang He,” Estimating Probability Density of Content Types for Promoting Medical Records Search”-European Conference on Information Retrieval, Volume.9626, March 2016. [3]. Hanna Suominen, Liyuan Zhou, Leif Hanlen, Gabreila Ferraro,” Benchmarking Clinical Speech Recognition and Information Extraction: New Data, Methods, and Evaluations”- JMIR Med Inform, volume.3, April 2015. [4]. Maree Johnson, Samuel Lapkin, Vanessa Long, Paula Sanchez,” A systematic review of speech recognition technology in health care”- BMC medical informatics and decision making, volume.14, October 2014. [5]. Linda Dawson, Maree Johnson, Hanna Suominen, Jim Basilakis,Paula Sanchez, Dominique Estival, Barbara Kelly , Leif Hanlen, “A usability framework for speech recognition technologies in clinical handover: A pre- implementation study”- Journal of Medical Systems,volume.38,May 2014. [6]. Girish Chandrasekar, Ferat Sahin,” A survey on feature selection methods”- Computers & Electrical Engineering,volume.40,January 2014. [7]. Maree Johnson, Paula Sanchez, H Suominen,” Comparing nursing handover and documentation: Forming one set of patient information”-International Nursing Review, volume.61, December 2013. [8]. Jenelle Matic, Patricia M Davidson, Yenna Salamonson,” Bringing patient safety to the forefront through structured computerizationduringclinical handover”-Journal ofClinical Nursing, volume.20, January 2011. [9]. Duong Thuy Tran, Maree Johnson,” Classifying nursing errors in clinical management within an Australian hospital”-International Nursing Review,Volume.57,December 2010.