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@article{ashikuzzaman2016hgi2,
abbr={Int. J. Mod.},
title={HgI2 as x-ray imager- Modulation transfer function approach},
author={Ashikuzzaman, Md and Ali, Jisan and Adib, R and Hossain, MM and Mahmood, SAV},
journal={International Journal of Modern Research Engineering Technology},
volume={1},
number={2},
pages={1--4},
year={2016},
abstract={The Modulation Transfer Function (MTF) of Polycrystalline Mercuric Iodide based flat panel x-ray detectors is simulated as a function of spatial frequency. A simplified mathematical model for MTF is applied on four different published prototypes of Polycrystalline Mercuric Iodide. Our aim was to fit curve from MTF model with the curve from experimental data. The result of simulation from theoretical model shows a good agreement with the measured data. We have found that deep-trapping,K-fluorescence,dependence of dark current on temperature and exposure time are the most possible reasons for the slight mismatches between two curves. In addition, the mobility-lifetime product for best curve fitting was also examined for each prototype.}
}
@inproceedings{ahsan2018culturally,
abbr={COMPSAC},
title={A Culturally Tailored Intervention System for Cancer Survivors to Motivate Physical Activity},
author={Ahsan, Golam Mushih Tanimul and Tumpa, Jannatul Ferdause and Adib, Riddhiman and Ahamed, Sheikh Iqbal and Petereit, Daniel and Burhansstipanov, Linda and Krebs, Linda U and Dignan, Mark},
booktitle={2018 IEEE 42nd Annual Computer Software and Applications Conference (COMPSAC)},
pages={875--880},
year={2018},
organization={IEEE},
abstract={It is necessary for a cancer survivor to have good health behavior. Essential exercise and proper diet are helpful to decrease the risk of recurrence of the disease and the development of a new cancer type. People from low socioeconomic status are more likely to participate in risky health behaviors and have a higher chance of recurrence of cancer. It is important to have a motivational system for cancer survivors that motivates them to perform regular physical activities. In this article, we discuss the development of an mHealth system, which aims to increase physical activity in Native American populations with culturally appropriate motivational text and video messages. The system also includes an e-journal to monitor and maintain proper healthcare. We will also analyze the pilot data to evaluate the usability and the effectiveness of the system.}
}
@inproceedings{hasan2018smarthelp,
abbr={AMIA},
title={Smarthelp: Smartphone-based hemoglobin level prediction using an artificial neural network},
author={Hasan, Md Kamrul and Haque, Md Munirul and Adib, Riddhiman and Tumpa, Jannatul F and Begum, Azima and Love, Richard R and Kim, Young L and Sheikh, I Ahamed},
booktitle={AMIA Annual Symposium Proceedings},
volume={2018},
pages={535},
year={2018},
organization={American Medical Informatics Association},
abstract={Blood hemoglobin level (Hgb) measurement has a vital role in the diagnosis, evaluation, and management of numerous diseases. We describe the use of smartphone video imaging and an artificial neural network (ANN) system to estimate Hgb levels non-invasively. We recorded 10 second-300 frame fingertip videos using a smartphone in 75 adults. Red, green, and blue pixel intensities were estimated for each of 100 area blocks in each frame and the patterns across the 300 frames were described. ANN was then used to develop a model using the extracted video features to predict hemoglobin levels. In our study sample, with patients 20-56 years of age, and gold standard hemoglobin levels of 7.6 to 13.5 g/dL., we observed a 0.93 rank order of correlation between model and gold standard hemoglobin levels. Moreover, we identified specific regions of interest in the video images which reduced the required feature space.}
}
@inproceedings{roushan2019towards,
abbr={COMPSAC},
title={Towards Predicting Risky Behavior Among Veterans with PTSD by Analyzing Gesture Patterns},
author={Roushan, Tanvir and Adib, Riddhiman and Johnson, Nadiyah and George, Olawunmi and Hossain, Md Fitrat and Franco, Zeno and Hooyer, Katinka and Ahamed, Sheikh Iqbal},
booktitle={2019 IEEE 43rd Annual Computer Software and Applications Conference (COMPSAC)},
volume={1},
pages={690--695},
year={2019},
organization={IEEE},
abstract={Risky behavior including violence and aggression, self-injury, anger outburst, domestic violence along with self-injury, sexual abuse, rule-breaking, use of drugs and alcohol, suicide, etc. are alarming issues among US military veterans who return from combat zone deployment in Iraq and Afghanistan. Veterans are exposed to trauma in war zones which affect most of them with post-traumatic stress disorder (PTSD) or other mental health problems to some degree. Studies have shown that veterans have much higher rates of PTSD than civilians and are more likely to engage in risky behavior. One of the forms of displaying and engaging in risky behaviors is through gestures. We collaborated with veterans and social scientists to find the list of 13 gestures that are often used by veterans engaged in risky behaviors. In this research work, we have collected accelerometer data from subjects performing the gestures mentioned above and have tried to detect them using machine learning techniques. This paper describes identifying gesture clusters from the accelerometer coordinate data and development of a predictive model that can classify the gestures resulting in the prediction of risky behaviors among the veterans who suffer from PTSD.}
}
@inproceedings{adib2019analyzing,
abbr={COMPSAC},
title={Analyzing Happiness: Investigation on Happy Moments using a Bag-of-Words Approach and Related Ethical Discussions},
author={Adib, Riddhiman and Aldawod, Eyad and Lang, Nathan and Lasswell, Nina and Guha, Shion},
booktitle={2019 IEEE 43rd Annual Computer Software and Applications Conference (COMPSAC)},
volume={1},
pages={653--662},
year={2019},
organization={IEEE},
abstract={In this research paper, we analyzed what moments and activities make people happy, based on a collection of happy moments. We are focusing on specific happy moments from a collection of text responses that people have shared through the crowd-sourcing platform: Amazon Mechanical Turk (MTurk). Using crowd-sourcing to collect our data allows us to advance our understanding of the cause of happiness, by focusing on words and real human experiences. Workers of MTurk were asked to reflect on what makes them happy in a given period and share three specific moments in complete sentences. Through text-based analysis, we will look to see what other components have a role in making a specific event happy and further analyze how we can classify such words. Also, we dive deeper into specific subcategories of classifiers in an attempt to form insights about their happiness level based on specific factors. With the goal to extract features from the text in HappyDB, in this study we used the bag of words approach. Through doing so, our results were successful at predicting the happiness category, concerning both accuracy and context. Our models were able to accomplish the goal of understanding a happy moment and fit such a moment into one of the seven ground truth happiness categories we set at the beginning of this study. We finished the article with the ethical perspective of such research works and related social implications.}
}
@inproceedings{tumpa2019mteh,
abbr={CHASE},
title={mTEH: A Decision Support System for Tele-Ophthalmology to Improve Eye Health of Wisconsin Population in Community Settings},
author={Tumpa, Jannatul F and Adib, Riddhiman and Das, Dipranjan and Ahamed, Sheikh I and Kim, Judy and Medic, Velinka and Castro, Al and Pacheco, Mirtha and Rowland, Rebecca and Romant, Jay},
booktitle={2019 IEEE/ACM International Conference on Connected Health: Applications, Systems and Engineering Technologies (CHASE)},
pages={25--26},
year={2019},
organization={IEEE},
abstract={mTEH (mobile Tele-Eye Health), a decision support system for teleophthalmology provides coordination among collaborators to conduct eye-screening events in community settings at southern Wisconsin with a mission to prevent vision loss as well as to educate people about diabetes and eye health. This system allows the collaborators to work in a time-efficient manner from remote locations and to manage data of the eye-screening participants securely.}
}
@inproceedings{tumpa2020community,
abbr={CSCW},
title={Community-based Retinal Screening with Multilingual Software Support to Overcome Language Barriers of Minority Communities},
author={Tumpa, Jannat and Adib, Riddhiman and Das, Dipranjan and Ahamed, Sheikh Iqbal and Abenoza, Nathalie and Zolot, Andrew and Medic, Velinka and Kim, Judy and Castro, Al and Pacheco, Mirtha Sosa and others},
booktitle={Conference Companion Publication of the 2020 on Computer Supported Cooperative Work and Social Computing},
pages={395--400},
year={2020},
abstract={Diabetic eye diseases, especially Diabetic Retinopathy, are the leading cause of vision loss worldwide and can be prevented by early diagnosis through annual retinal screening. Various socio-cultural factors, such as cost, healthcare disparities, cultural limitations, etc. are the foremost barriers against regular screening in minority communities. Retinal-screenings arranged in community settings with native-speaking staffs can facilitate regular check-ups and overcome language barriers of underprivileged communities compared to conventional clinical settings. As part of our study, we surveyed 400 participants to assess the acceptance of community-based screening methods among community participants. In addition to very positive responses about this screening approach’s diverse perspectives, we found that having native-speaking staff at screening events can help overcome language barriers. Moreover, integrating multilingual support in the electronic health record software to assist the native-speaking staff is a significant factor in designing such systems.}
}
@article{lerret2020pilot,
abbr={Res. Nurs. Health},
title={Pilot study protocol of a mHealth self-management intervention for family members of pediatric transplant recipients},
author={Lerret, Stacee M and White-Traut, Rosemary and Medoff-Cooper, Barbara and Simpson, Pippa and Adib, Riddhiman and Ahamed, Sheikh Iqbal and Schiffman, Rachel},
journal={Research in Nursing & Health},
year={2020},
publisher={Wiley Online Library},
abstract={Solid‐organ transplantation is the treatment of choice for end‐stage organ failure. Parents of pediatric transplant recipients who reported a lack of readiness for discharge had more difficulty coping and managing their child's medically complex care at home. In this paper, we describe the protocol for the pilot study of a mHealth intervention (myFAMI). The myFAMI intervention is based on the Individual and Family Self‐Management Theory and focuses on family self‐management of pediatric transplant recipients at home. The purpose of the pilot study is to test the feasibility of the myFAMI intervention with family members of pediatric transplant recipients and to test the preliminary efficacy on postdischarge coping through a randomized controlled trial. The sample will include 40 family units, 20 in each arm of the study, from three pediatric transplant centers in the United States. Results from this study may advance nursing science by providing insight for the use of mHealth to facilitate patient/family–nurse communication and family self‐management behaviors for family members of pediatric transplant recipients.}
}
@article{lerret2020using,
abbr={J. Pediatr. Nurs.},
title={Using the engaging parents in education for discharge (ePED) iPad application to improve parent discharge experience},
author={Lerret, Stacee M and Johnson, Norah L and Polfuss, Michele and Weiss, Marianne and Gralton, Karen and Klingbeil, Carol G and Gibson, Cori and Garnier-Villarreal, Mauricio and Ahamed, S Iqbal and Adib, Riddhiman and others},
journal={Journal of Pediatric Nursing},
volume={52},
pages={41--48},
year={2020},
publisher={Elsevier},
abstract={Purpose:The purpose of this study was to evaluate the use of the Engaging Parents in Education for Discharge (ePED) iPad application on parent experiences of hospital discharge teaching and care coordination. Hypotheses were: parents exposed to discharge teaching using ePED will have 1) higher quality of discharge teaching and 2) better care coordination than parents exposed to usual discharge teaching. The secondary purpose examined group differences in the discharge teaching, care coordination, and 30-day readmissions for parents of children with and without a chronic condition.Design/Methods:Using a quasi-experimental design, ePED was implemented on one inpatient unit (n = 211) and comparison group (n = 184) from a separate unit at a pediatric academic medical center. Patient experience outcome measures collected on day of discharge included Quality of Discharge Teaching Scale-Delivery (QDTS-D) and care coordination measured by Care Transition Measure (CTM). Thirty-day readmission was abstracted from records.Results:Parents taught using ePED reported higher QDTS-D scores than parents without ePED (p = .002). No differences in CTM were found between groups. Correlations between QDTS-D and CTM were small for ePED (r = 0.14, p 0.03) and non-ePED (r = 0.29, p < .001) parent groups. CTM was weakly associated with 30-day readmissions in the ePED group.Conclusion:The use of ePED by the discharging nurse enhances parent-reported quality of discharge teaching.Practice implications:The ePED app is a theory-based structured conversation guide to engage parents in discharge preparation. Nursing implementation of ePED contributes to optimizing the patient/family healthcare experience.}
}
@article{johnson2020engaging,
abbr={J. Pediatr. Nurs.},
title={Engaging parents in education for discharge (ePED): Evaluating the reach, adoption \& implementation of an innovative discharge teaching method},
author={Johnson, Norah L and Lerret, Stacee and Klingbeil, Carol G and Polfuss, Michele and Gibson, Cori and Gralton, Karen and Garnier-Villarreal, Mauricio and Ahamed, S Iqbal and Riddhiman, Adib and Unteutsch, Rachel and others},
journal={Journal of Pediatric Nursing},
volume={54},
pages={42--49},
year={2020},
publisher={Elsevier},
abstract={Purpose: This paper describes the evaluation of the implementation of an innovative teaching method, the “Engaging Parents in Education for Discharge” (ePED) iPad application (app), at a pediatric hospital. Design and methods: Results: The Reach of the ePED was 245 of 1015 (24.2%) patient discharges. The Adoption rate was 211 of 245 (86%) patients discharged in the five months' study period. High levels of fidelity (89.3%) to Implementation of the ePED were attained: the Signs and Symptoms domain had the highest (93%) and Thinking Forward about Family Adjustment screen had the lowest fidelity (83.3%). Nurse themes explained implementation fidelity: “It takes longer”, and “Forgot to do it.” Conclusions: The ePED app operationalized how to have an engaging structured discharge conversation with parents. While the Reach of the ePED app was low under the study conditions, the adoption rate was positive. Nurses were able to integrate a theory-driven practice change into their daily routine when using the ePED app. Implications for practice: The rates of adoption and implementation fidelity support the feasibility of future hospital wide implementation to improve patient and family healthcare experience. Attention to training of new content and the interactive conversation approach will be needed to fully leverage the value of the ePED app. Future studies are needed to evaluate the maintenance of the ePED app.}
}
@inproceedings{adib2020causally,
abbr={PMLR},
title={A Causally Formulated Hazard Ratio Estimation through Backdoor Adjustment on Structural Causal Model},
author={Adib, Riddhiman and Griffin, Paul and Ahamed, Sheikh Iqbal and Adibuzzaman, Mohammad},
booktitle={Machine Learning for Healthcare Conference},
pages={376--396},
year={2020},
organization={PMLR},
abstract={Identifying causal relationships for a treatment intervention is a fundamental problem in health sciences. Randomized controlled trials (RCTs) are considered the gold standard for identifying causal relationships. However, recent advancements in the theory of causal inference based on the foundations of structural causal models (SCMs) have allowed the identification of causal relationships from observational data, under certain assumptions. Survival analysis provides standard measures, such as the hazard ratio, to quantify the effects of an intervention. While hazard ratios are widely used in clinical and epidemiological studies for RCTs, a principled approach does not exist to compute hazard ratios for observational studies with SCMs. In this work, we review existing approaches to compute hazard ratios as well as their causal interpretation, if it exists. We also propose a novel approach to compute hazard ratios from observational studies using backdoor adjustment through SCMs and do-calculus. Finally, we evaluate the approach using experimental data for Ewing’s sarcoma.},
selected={true}
}
@article{johnson2022one,
abbr={West. J. Nurs. Res},
title={One Size Does Not Fit All: Discharge Teaching and Child Challenging Behaviors},
author={Johnson, Norah L and Lerret, Stacee and Polfuss, Michele and Gralton, Karen and Gibson, Cori and Ahamed, Sheikh I and Riddhiman, Adib and White-Traut, Rosemary and Brown, Roger L and Sawin, Kathleen J},
journal={Western Journal of Nursing Research},
volume={44},
number={9},
pages={863--873},
year={2022},
publisher={SAGE Publications Sage CA: Los Angeles, CA},
abstract={This study compares quality of discharge teaching and care coordination for parents of children with challenging behaviors participating in a nursing implementation project, which used an interactive iPad application, to usual discharge care. Unlike parents in the larger quasi-experimental longitudinal project, parents of children with challenging behaviors receiving the discharge teaching application (n = 14) reported lower mean scores on the quality of discharge teaching scale–delivery subscale (M = 8.2, SD= 3.1) than parents receiving usual care (n = 11) (M = 9.6, SD= 4.7) and lower scores on the Care Transition Measure (M = 2.44, SD= 1.09) than parents receiving usual care (M = 3.02, SD= 0.37), with moderate to large effects (0.554–0.775). The discharge teaching approach was less effective with this subset, suggesting other approaches might be considered for this group of parents. Further study with a larger sample specific to parents of children with challenging behaviors is needed to assess their unique needs and to optimize their discharge experience.}
}
@article{lerret2022feasibility,
title={Feasibility and acceptability of a mHealth self-management intervention for pediatric transplant families},
author={Lerret, Stacee M and Schiffman, Rachel and White-Traut, Rosemary and Medoff-Cooper, Barbara and Ahamed, Sheikh Iqbal and Adib, Riddhiman and Liegl, Melodee and Alonso, Estella and Mavis, Alisha and Jensen, Kyle and others},
journal={Western journal of nursing research},
volume={44},
number={10},
pages={955--965},
year={2022},
publisher={SAGE Publications Sage CA: Los Angeles, CA}
}
@inproceedings{tumpa2022mtocs,
abbr={COMPSAC},
title={mTOCS: Mobile Teleophthalmology in Community Settings to improve Eye-health in Diabetic Population},
author={Tumpa, Jannatul Ferdause and Adib, Riddhiman and Das, Dipranjan and Abenoza, Nathalie and Zolot, Andrew and Medic, Velinka and Kimt, Judy and Romant, Jay and Ahamed, Sheikh Iqbal},
booktitle={2022 IEEE 46th Annual Computers, Software, and Applications Conference (COMPSAC)},
pages={100--109},
year={2022},
organization={IEEE},
abstract={Diabetic eye diseases, particularly Diabetic Retinopathy, is the leading cause of vision loss worldwide and can be prevented by early diagnosis through annual eye-screenings. However, cost, health care disparities, cultural limitations, etc. are the main barriers against regular screening. Eye-screenings conducted in community events with native-speaking staffs can facilitate regular check-up and development of awareness among underprivileged communities compared to traditional clinical settings. However, there are not sufficient technology support for carrying out the screenings in community settings with collaboration from community partners using native languages. In this paper, we have proposed and discussed the development of our software framework, “Mobile Teleophthalmology in Community Settings (mTOCS)”, that connects the community partners with eye-specialists and the Health Department staffs of respective cities to expedite this screening process. Moreover, we have presented the analysis from our study on the acceptance of community-based screening methods among the community participants as well as on the effectiveness of mTOCS among the community partners. The results have evinced that mTOCS has been capable of providing an improved rate of eye-screenings and better health outcomes.}
}
@article{adib2022mhealth,
abbr={JMIR},
title={An mHealth App-Based Self-management Intervention for Family Members of Pediatric Transplant Recipients (myFAMI): Framework Design and Development Study},
author={Adib, Riddhiman and Das, Dipranjan and Ahamed, Sheikh Iqbal and Lerret, Stacee Marie and others},
journal={JMIR nursing},
volume={5},
number={1},
pages={e32785},
year={2022},
publisher={JMIR Publications Inc., Toronto, Canada},
abstract={Background: Solid-organ transplantation is the treatment of choice for children with end-stage organ failure. Ongoing recovery and medical management at home after transplant are important for recovery and transition to daily life. Smartphones are widely used and hold the potential for aiding in the establishment of mobile health (mHealth) protocols. Health care providers, nurses, and computer scientists collaboratively designed and developed mHealth family self-management intervention (myFAMI), a smartphone-based intervention app to promote a family self-management intervention for pediatric transplant patients’ families. Objective: This paper presents outcomes of the design stages and development actions of the myFAMI app framework, along with key challenges, limitations, and strengths. Methods: The myFAMI app framework is built upon a theory-based intervention for pediatric transplant patients, with aid from the action research (AR) methodology. Based on initially defined design motivation, the team of researchers collaboratively explored 4 research stages (research discussions, feedback and motivations, alpha testing, and deployment and release improvements) and developed features required for successful inauguration of the app in the real-world setting. Results: Deriving from app users and their functionalities, the myFAMI app framework is built with 2 primary components: the web app (for nurses’ and superadmin usage) and the smartphone app (for participant/family member usage). The web app stores survey responses and triggers alerts to nurses, when required, based on the family members’ response. The smartphone app presents the notifications sent from the server to the participants and captures survey responses. Both the web app and the smartphone app were built upon industry-standard software development frameworks and demonstrate great performance when deployed and used by study participants. Conclusions: The paper summarizes a successful and efficient mHealth app-building process using a theory-based intervention in nursing and the AR methodology in computer science. Focusing on factors to improve efficiency enabled easy navigation of the app and collection of data. This work lays the foundation for researchers to carefully integrate necessary information (from the literature or experienced clinicians) to provide a robust and efficient solution and evaluate the acceptability, utility, and usability for similar studies in the future.}
}
@article{gani2023structural,
abbr={AI in Med},
title={Structural causal model with expert augmented knowledge to estimate the effect of oxygen therapy on mortality in the icu},
author={Gani, Md Osman and Kethireddy, Shravan and Adib, Riddhiman and Hasan, Uzma and Griffin, Paul and Adibuzzaman, Mohammad},
journal={Artificial intelligence in medicine},
volume={137},
pages={102493},
year={2023},
publisher={Elsevier},
selected={true},
abstract={Recent advances in causal inference techniques, more specifically, in the theory of structural causal models, provide the framework for identifying causal effects from observational data in cases where the causal graph is identifiable, i.e., the data generation mechanism can be recovered from the joint distribution. However, no such studies have been performed to demonstrate this concept with a clinical example. We present a complete framework to estimate the causal effects from observational data by augmenting expert knowledge in the model development phase and with a practical clinical application. Our clinical application entails a timely and essential research question, the effect of oxygen therapy intervention in the intensive care unit (ICU). The result of this project is helpful in a variety of disease conditions, including severe acute respiratory syndrome coronavirus-2 (SARSCoV-2) patients in the ICU. We used data from the MIMIC-III database, a widely used health care database in the machine learning community with 58,976 admissions from an ICU in Boston, MA, to estimate the oxygen therapy effect on morality. We also identified the model’s covariate-specific effect on oxygen therapy for more personalized intervention.}
}
@article{adib2024311,
abbr={JCTS},
title={Clinical Abstract: Democratizing access to clinical data for research: Implementation and evaluation strategies in an academic medical center and lessons learned},
author={Adib, Riddhiman and Myers, Susan and Benton, Erik and Cohen, Aaron and Adibuzzaman, Mohammad},
journal={Journal of Clinical and Translational Science},
volume={8},
number={s1},
pages={95--96},
year={2024},
publisher={Cambridge University Press},
selected={true},
abstract={To facilitate data exploration at an academic medical center, we piloted self-service data science tools to provide easy access to research data and provide analytical workspace. The objectives are: i) data delivery with data governance and cohort discovery under a managed self-service model and ii) data science and analytics tool for advanced users. Using existing commercial frameworks, we implemented a few pilot self-service tools. The key characteristics of the tools were i) high degrees of functionality and flexibility for data access and data governance, ii) lower cost to build and maintain, and iii) long-term organizational strategic alignment with the academic medical center. We conducted a two-phase evaluation with the pilot self-service tool: functionality-based assessment, prioritizing tools for data science users, and usability-based assessment, evaluating selected tools through customized maturity models and surveys. The evaluation study targeted a focus group study with five diverse faculties and researchers in an academic medical center seeking improved access to research resources. In evaluation phase 1, we explored seven self-service tool frameworks suitable for our research data warehouse (RDW). In phase 2, we implemented the top two tools selected from phase 1, QlikView and Palantir Foundry. Although the tool built on Palantir has higher mean and individual scores for user feedback than Qlik's, there is no statistically significant difference. Both tools had steep initial learning curve. Palantir has better feedback from qualitative responses. Our study findings highlight prioritized functionalities (efficiency, flexibility, sustainability, security, and cost reduction) for data science tool users; however features and the tool itself requires long term organizational planning and investment. Academic and research medical centers strongly focus on efficient pilot data access for researchers to aid hypothesis generation. Establishing a clinical research-focused self-service data tool addresses the well-established demand for research resources and offers a model for similar organizations.}
}