Digital phenotyping of depression during pregnancy using self-report data

被引:4
作者
Allen, Kristen [1 ,2 ]
Rodriguez, Samantha
Hayani, Laila [4 ]
Rothenberger, Scott [3 ]
Moses-Kolko, Eydie [5 ]
Simhan, Hyagriv N. [6 ]
Krishnamurti, Tamar [3 ]
机构
[1] Carnegie Mellon Univ, Dept Engn & Publ Policy, Pittsburgh, PA USA
[2] Allegheny Cty Dept Human Serv, Pittsburgh, PA USA
[3] Univ Pittsburgh, Div Gen Internal Med, 230 McKee Pl,Suite 600, Pittsburgh, PA 15213 USA
[4] Naima Hlth LLC, Pittsburgh, PA USA
[5] Univ Pittsburgh, Western Psychiat Hosp, Med Ctr, Pittsburgh, PA USA
[6] Univ Pittsburgh, Dept OB GYN & Reprod Sci, Pittsburgh, PA USA
关键词
Depression; Pregnancy; Mhealth; Risk modeling; Natural language processing; Machine learning; POSTPARTUM DEPRESSION; MATERNAL DEPRESSION; PERINATAL DEPRESSION; SYMPTOMS; RISK; BARRIERS; LANGUAGE; SUICIDE; WOMEN; BIRTH;
D O I
10.1016/j.jad.2024.08.029
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Background: Depression is a common pregnancy complication yet is often under-detected and, subsequently, undertreated. Data collected through mobile health tools may be used to support the identification of depression symptoms in pregnancy. Methods: An observational cohort study of 2062 pregnancies collected self-reports of patient history, mood, pregnancy-specific symptoms, and written language using a prenatal support app. These app inputs were used to model depression risk in subsequent 30- and 60-day periods throughout pregnancy. A selective inference lasso modeling approach examined the individual and additive value of each type of patient-reported app input. Results: Depression models ranged in predictive power (AUC value of 0.64-0.83), depending on the type of inputs. The most predictive model included personal history, daily mood, and acute pregnancy-related symptoms (e.g., severe vomiting, cramping). Across models, daily mood was the strongest indicator of depression symptoms in the following month. Models that retained natural language inputs typically improved predictive accuracy and offered insight into the lived context associated with experiencing depression. Limitations: Our findings are not generalizable beyond a digitally literate patient population that is self-motivated to report data during pregnancy. Conclusions: Simple patient reported data, including sparse language, shared directly via digital tools may support earlier depression symptom identification and a more nuanced understanding of depression context.
引用
收藏
页码:231 / 239
页数:9
相关论文
共 89 条
[41]   The Rise of Pregnancy Apps and the Implications for Culturally and Linguistically Diverse Women: Narrative Review [J].
Hughson, Jo-anne Patricia ;
Daly, J. Oliver ;
Woodward-Kron, Robyn ;
Hajek, John ;
Story, David .
JMIR MHEALTH AND UHEALTH, 2018, 6 (11)
[42]   Neonatal Outcomes in Women With Untreated Antenatal Depression Compared With Women Without Depression A Systematic Review and Meta-analysis [J].
Jarde, Alexander ;
Morais, Michelle ;
Kingston, Dawn ;
Giallo, Rebecca ;
MacQueen, Glenda M. ;
Giglia, Lucy ;
Beyene, Joseph ;
Wang, Yi ;
McDonald, Sarah D. .
JAMA PSYCHIATRY, 2016, 73 (08) :826-837
[43]   Suicidal Ideation Detection: A Review of Machine Learning Methods and Applications [J].
Ji, Shaoxiong ;
Pan, Shirui ;
Li, Xue ;
Cambria, Erik ;
Long, Guodong ;
Huang, Zi .
IEEE TRANSACTIONS ON COMPUTATIONAL SOCIAL SYSTEMS, 2021, 8 (01) :214-226
[44]   Examining Access to Digital Technology by Race and Ethnicity and Child Health Status Among Chicago Families [J].
Kan, Kristin ;
Heard-Garris, Nia ;
Bendelow, Anne ;
Morales, Lu ;
Lewis-Thames, Marquita W. ;
Davis, Matthew M. ;
Heffernan, Marie .
JAMA NETWORK OPEN, 2022, 5 (08) :E2228992
[45]   Using language in social media posts to study the network dynamics of depression longitudinally [J].
Kelley, Sean W. ;
Gillan, Claire M. .
NATURE COMMUNICATIONS, 2022, 13 (01)
[46]   Health App Use Among US Mobile Phone Owners: A National Survey [J].
Krebs, Paul ;
Duncan, Dustin T. .
JMIR MHEALTH AND UHEALTH, 2015, 3 (04) :107-119
[47]   Predicting first time depression onset in pregnancy: applying machine learning methods to patient-reported data [J].
Krishnamurti, Tamar ;
Rodriguez, Samantha ;
Wilder, Bryan ;
Gopalan, Priya ;
Simhan, Hyagriv N. .
ARCHIVES OF WOMENS MENTAL HEALTH, 2024, 27 (06) :1019-1031
[48]  
Krishnamurti Tamar, 2022, Procedia Comput Sci, V206, P132, DOI 10.1016/j.procs.2022.09.092
[49]   A Framework for Femtech: Guiding Principles for Developing Digital Reproductive Health Tools in the United States [J].
Krishnamurti, Tamar ;
Talabi, Mehret Birru ;
Callegari, Lisa S. ;
Kazmerski, Traci M. ;
Borrero, Sonya .
JOURNAL OF MEDICAL INTERNET RESEARCH, 2022, 24 (04)
[50]   Mobile Remote Monitoring of Intimate Partner Violence Among Pregnant Patients During the COVID-19 Shelter-In-Place Order: Quality Improvement Pilot Study [J].
Krishnamurti, Tamar ;
Davis, Alexander L. ;
Quinn, Beth ;
Castillo, Anabel F. ;
Martin, Kelly L. ;
Simhan, Hyagriv N. .
JOURNAL OF MEDICAL INTERNET RESEARCH, 2021, 23 (02)