scholarly journals Fusion of Clinical Data: A Case Study to Predict the Type of Treatment of Bone Fractures

Author(s):  
Anam Haq ◽  
Szymon Wilk
Keyword(s):  
Author(s):  
Anam Haq ◽  
Szymon Wilk ◽  
Alberto Abelló

Abstract A prominent characteristic of clinical data is their heterogeneity—such data include structured examination records and laboratory results, unstructured clinical notes, raw and tagged images, and genomic data. This heterogeneity poses a formidable challenge while constructing diagnostic and therapeutic decision models that are currently based on single modalities and are not able to use data in different formats and structures. This limitation may be addressed using data fusion methods. In this paper, we describe a case study where we aimed at developing data fusion models that resulted in various therapeutic decision models for predicting the type of treatment (surgical vs. non-surgical) for patients with bone fractures. We considered six different approaches to integrate clinical data: one fusion model based on combination of data (COD) and five models based on combination of interpretation (COI). Experimental results showed that the decision model constructed following COI fusion models is more accurate than decision models employing COD. Moreover, statistical analysis using the one-way ANOVA test revealed that there were two groups of constructed decision models, each containing the set of three different models. The results highlighted that the behavior of models within a group can be similar, although it may vary between different groups.


Author(s):  
Houssam Nassif ◽  
Ryan Woods ◽  
Elizabeth Burnside ◽  
Mehmet Ayvaci ◽  
Jude Shavlik ◽  
...  

2019 ◽  
Vol 40 (Supplement_1) ◽  
Author(s):  
Y X Li ◽  
J Jiang ◽  
Y Zhang ◽  
J P Li ◽  
Y Huo

Abstract Introduction Clinical data repositories (CDR) including electronic health record (EHR) data have great potential for outcome prediction and risk modeling. However, most CDRs were only used for data displaying, and using data from CDR for outcome prediction often requires careful study design and sophisticated modeling techniques before a hypothesis can be tested. Purpose We built a prediction tool integrated with CDR based on pattern discovery aiming to bridge the above gap and demonstrated a case study on contrast related acute kidney injury (AKI) with the system. Methods A cardiovascular CDR integrated with multiple hospital informatics systems was established. For the case study on AKI, we included patients undergoing cardiac catheterization from January 13, 2015 to April 27, 2017, excluding those with dialysis, end-stage renal disease, renal transplant, and missing pre- or post-procedural creatinine. To handle missing data, a prior-history-note composer was designed to fill in structured data of 14 diseases related to cardiovascular problem. Crucial data such as ejective fraction was extracted from the structured reports. AKI was defined according to Acute Kidney Injury Network by increase of serum creatinine from most recent baseline to the post-procedure 7-day peak. To build predictive modeling, we selected 17 variables covered in existing AKI models. Pattern discovery was recently developed as an interpretable predictive model which works on incomplete noisy data. In this study, we developed a pattern discovery based visual analytics tool, and trained it on 70% data up to August 2016 with three interactive knowledge incorporation modes to develop 3 models: 1) pure data-driven, 2) domain knowledge, and 3) clinician-interactive. In last two modes, a physician using the visual analytics could change the variables and further refine the model, respectively. We tested and compared it with other models on the 30% consecutive patients dated afterwards, which is shown in Figure 1. Results Among 2,560 patients in the final dataset with 17 pre-procedure variables derived from CDR data, 169 (7.3%) had AKI. We measured 4 existing models, whose areas under curves (AUCs) of receiver operating characteristics curve for the test set were 0.70 (Mehran's), 0.72 (Chen's), 0.67 (Gao's) and 0.62 (AGEF), respectively. A pure data-driven machine learning method achieves AUC of 0.72 (Easy Ensemble). The AUCs of our 3 models are 0.77, 0.80, 0.82, respectively, with the last being top where physician knowledge is incorporated. Demo and demonstration Conclusions We developed a novel pattern-discovery-based outcome prediction tool integrated with CDR and purely using EHR data. On the case of predicting contrast related AKI, the tool showed user-friendliness by physicians, and demonstrated a competitive performance in comparison with the state-of-the-art models.


1997 ◽  
Vol 44 (2) ◽  
pp. 145-155
Author(s):  
Jan-Christian Lehtinen ◽  
Jari Forsström ◽  
Pertti Koskinen ◽  
Tuula-Anneli Penttilä ◽  
Timo Järvi ◽  
...  

2020 ◽  
Vol 8 (9) ◽  
pp. 4544-4548
Author(s):  
Sarmah Jyoti Manab ◽  
Mahor Bharti ◽  
Arse Reshma ◽  
Kumar Pravesh

Avascular necrosis is a disease in which cellular death of bone component occurs due to interruption of the blood supply. Bone fractures, joint dislocations, alcoholism and long-term use of steroids are the commonly found risk factors of the disease. The disease generally happens in 35 to 60 years old population and commonly affects hip joint. About 10,000 to 20,000 people usually develop osteonecrosis of head of femur yearly in United States. This case deals with a diagnosed case of avascular necrosis of the femoral head in a 68 years old female. Patient had been suffering from pain in the left hip joint since 5 years. She had been under allopathic conservative treatment for her complaints, but symptoms aggravated rapidly since 4 months. So, for further management, she came to Out Patient Department of Panchakarma, Rishikul Campus where three sittings of local application of Mustadi Upanaha on left hip region along with Taila Dhara with Dhanwantaram Taila was performed. After three sittings, she got significant relief in joint pain and her quality of life. The assessment was done based on both subjective as well as objective parameters after each sitting. This study reveals that Panchakarma procedure like Mustadi Upnaha, Taila Dhara provided a significant relief in this case.


2021 ◽  
Author(s):  
Tanmay Dharmadhikari ◽  
Vinay Rajput ◽  
Rakeshkumar Yadav ◽  
Radhika Boargaonkar ◽  
Dayanand Panse ◽  
...  

Given a large number of SARS-CoV-2 infected individuals, clinical detection has proved challenging. The wastewater-based epidemiological paradigm would cover the clinically escaped asymptomatic individuals owing to the faecal shedding of the virus. We hypothesised using wastewater as a valuable resource for analysing SARS-CoV-2 mutations circulating in the wastewater of Pune region (Maharashtra; India), one of the most affected during the covid-19 pandemic. We conducted a case study in open wastewater drains from December 2020-March 2021 to assess the presence of SARS-CoV-2 nucleic acid and further detect mutations using ARTIC protocol of MinION sequencing. The analysis revealed 108 mutations across six samples categorised into 40 types of mutations. We report the occurrence of mutations associated with B.1.617 lineage in March-2021 samples, simultaneously also reported as a Variant of Concern (VoC) responsible for the rapid increase in infections. The study also revealed four mutations; S:N801, S:C480R, NSP14:C279F and NSP3:L550del not currently reported from wastewater or clinical data in India but reported in the world. Further, a novel mutation NSP13:G206F mapping to NSP13 region was observed from wastewater. Notably, S:P1140del mutation was observed in December 2020 samples while it was reported in February 2021 from clinical data, indicating the instrumentality of wastewater data in early detection. This is the first study in India to conclude that wastewater-based epidemiology to identify mutations associated with SARS-CoV-2 virus from wastewater as an early warning indicator system.


2020 ◽  
Vol 18 (9) ◽  
pp. 28-34
Author(s):  
Ruth Fraser ◽  
Mark J Baker

Crohn's disease is a long-term, painful inflammatory condition that may affect any or all parts of a person's gastrointestinal tract and is categorised under the umbrella term of inflammatory bowel disease. The exact aetiology is unclear, although a range of factors are thought to be responsible. Pharmacological interventions used to manage active Crohn's disease, such as steroids, can have a detrimental effect on the patient's bone density, leading to complications, such as osteoporosis, and subsequent bone fractures following minor trauma. A case study is presented of a patient with Crohn's disease who presented to the emergency department with a hip fracture, likely caused by osteoporosis due to a history of steroid use to manage his Crohn's disease. The case study illustrates a holistic, patient-centred approach to nursing assessment, management and evaluation of care, demonstrated by a student nurse under the supervision of a qualified nurse. It shows how nursing practice should be guided by reliable and credible evidence to ensure continuity of care and the best possible outcomes for patients, as well as ensure that the patient's psychological wellbeing, as well as their physical health, is cared for.


Sign in / Sign up

Export Citation Format

Share Document