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Journal : Proceeding of International Conference Health, Science And Technology (ICOHETECH)

EVALUATION OF DOCUMENTATION SEQUENCE CAUSES PERINATAL Widyaningrum, Linda; Sugianto, Zaenal; Setiawan, Bagas
Proceeding of the International Conference Health, Science And Technology (ICOHETECH) 2023: Proceeding of the 4th International Conference Health, Science And Technology (ICOHETECH)
Publisher : LPPM Universitas Duta Bangsa Surakarta

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.47701/icohetech.v4i1.3406

Abstract

The Underlying cause of death is an event or condition without which the patient would not have died. The aim of the research is to determine the accuracy of writing the sequence of causes of perinatal death based on mortality rules The research method used in this research is descriptive research, with a retrospective approach. Data collection using observation and interviews. The research population was 50 medical record documents of patients who died perinatally in 2018-2022 using a saturated sampling technique. The percentage of accuracy in writing the sequence of perinatal deaths at PKU Muhammadiyah Hospital Surakarta shows 100% inaccurate. The writing inaccuracy is due to the writing not being in accordance with the existing standart Operating Procedure, the order of perinatal death is still written on the medical certificate for the cause of adult death. The accuracy of writing the order of perinatal deaths is still relatively low. It would be better if the hospital further increases its outreach activities so that medical personnel can write the order of death on the certificate correctly in accordance with the rules or standards that apply in the hospital.
AUTOMATIC ICD TO IMPROVE DIAGNOSIS CODING ACCURACY: A LITERATURE STUDY Tominanto, Tominanto; Widyaningrum, Linda; Khoirunnisa’, Arifah; Anggraini, Eva Ayu
Proceeding of the International Conference Health, Science And Technology (ICOHETECH) 2023: Proceeding of the 4th International Conference Health, Science And Technology (ICOHETECH)
Publisher : LPPM Universitas Duta Bangsa Surakarta

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.47701/icohetech.v4i1.3420

Abstract

ICD coding is usually done by a coder who assigns the ICD code according to the Doctor's clinical diagnosis. However, because coders need to master specific skills, such as knowledge in the field of medicine, coding rules, and medical terminology, manual coding can be costly, time-consuming, and inefficient. Based on this, developing a computationally accurate approach to automatic ICD encoding is imperative. This literature study aims to provide an overview of automatic ICD in terms of the dataset and classification method used. The literature study results show that automatic ICD research to improve the accuracy of diagnosis coding has been done and is still a challenge today. Most of the datasets used are the public MIMIC-III dataset, while automatic ICD classification is the current research trend with deep learning. The deep learning algorithms that are widely used include CNN, RNN, and LSTM. The resulting accuracy based on the dataset and classification method is very diverse. Future research still has many opportunities to contribute and improve the correct classification method to improve automatic ICD accuracy.