| Literature DB >> 32460734 |
Simone A Cammel1, Marit S De Vos2,3, Daphne van Soest4, Kristina M Hettne5, Fred Boer4, Ewout W Steyerberg6, Hileen Boosman4.
Abstract
BACKGROUND: Patient experience surveys often include free-text responses. Analysis of these responses is time-consuming and often underutilized. This study examined whether Natural Language Processing (NLP) techniques could provide a data-driven, hospital-independent solution to indicate points for quality improvement.Entities:
Keywords: Data science; Machine learning; Natural language processing; PREM; Patient experience analysis; Text analytics
Mesh:
Year: 2020 PMID: 32460734 PMCID: PMC7251822 DOI: 10.1186/s12911-020-1104-5
Source DB: PubMed Journal: BMC Med Inform Decis Mak ISSN: 1472-6947 Impact factor: 2.796
Fig. 1Data flow diagram of data-preprocessing steps used for topic modeling method
Data description during preprocessing steps
| Hospital | Questiona | Total no of questions answered | Average no of words per answer | Original corpus size | Corpus size after pre-processing | Optimal no of topics for topic model | No of n-grams |
|---|---|---|---|---|---|---|---|
| 1 | Q1: remarkably well | 20,982 | 9.13 | 195,579 | 1158 | 64 | 165 |
| 1 | Q2: not as well | 17,682 | 17.85 | 311,345 | 1814 | 63 | 117 |
| 2 | Q1: remarkably well | 2608 | 8.33 | 21,727 | 216 | 59 | 116 |
| 2 | Q2: not as well | 2537 | 24.93 | 63,262 | 628 | 50 | 119 |
a Q1: What went remarkably well during your stay? Q2: What did not go as well during your stay?
Top 5 patient experience priorities to celebrate, monitor and improve on for both hospitals
| N-gram (literal transllation) | Original (one word topic) | Frequency | Sentiment | Impact | Question | N-gram (translated) | Original (one word) topic | Frequency | Sentiment | Impact | Question |
|---|---|---|---|---|---|---|---|---|---|---|---|
| No examples did not go well | No comment | 883 | 0.534 | 10 | 2 | Very satisfied staff | Satisfied | 111 | 0,437 | 10 | 1 |
| Pleasant welcome guidance | Pleasant | 322 | 0.552 | 10 | 1 | Friendliness doctors staff | Friendliness | 64 | 0,409 | 5.0 | 1 |
| Friendliness nursing staff | Friendliness | 651 | 0.314 | 6.5 | 1 | Complete treatment perfect | Treatment | 98 | 0,279 | 3.6 | 1 |
| Staff very kind | Sweet | 180 | 0.519 | 4.9 | 1 | Acted quickly with expertise | Satisfied | 52 | 0,359 | 3.1 | 1 |
| Friendly reception department | Reception | 184 | 0.476 | 4.3 | 1 | Expertise of staff | Staff | 47 | 0,25 | 2.34 | 1 |
| Went wrong once | Mistake | 98 | −0.580 | 1.3 | 2 | No emergency department | Emergency department | 18 | −0.587 | 5.1 | 2 |
| Room cold | Cold | 155 | − 0.428 | 1.1 | 2 | Going home fast | Speed | 25 | −0.403 | 3.3 | 2 |
| Late communication between staff | Aftercare | 148 | −0.404 | 1.0 | 2 | Waiting for results | Waiting | 20 | −0.345 | 2.0 | 2 |
| Discharge unclear took long | Unclear | 116 | −0.373 | 0.7 | 2 | Time for patient | Patient | 21 | −0.256 | 1.1 | 2 |
| When could go home | Home | 36 | −0.638 | 0.6 | 2 | Took time | Time | 20 | −0.253 | 1.0 | 2 |
| Long waiting before surgery | Long | 393 | −0.490 | 3.7 | 2 | Long waiting in waiting area | Waiting area | 45 | −0.521 | 10 | 2 |
| Leave early from home | Home | 222 | −0.628 | 3.5 | 2 | Lower waiting time | Waiting | 38 | −0.54 | 9.0 | 2 |
| Long waiting times | Waiting time | 404 | −0.287 | 1.3 | 2 | Only night bad | Night | 60 | −0.343 | 5.8 | 2 |
| Temperature room low | Room | 339 | −0.295 | 1.2 | 2 | Communication between departments | Communication | 43 | −0.351 | 4.3 | 2 |
| At times very busy | Busy | 159 | −0.428 | 1.2 | 2 | Waiting time to get appointment | Appointment | 46 | −0.329 | 4.1 | 2 |
N.B. some results can be difficult to interpret due to translation from Dutch to English
Fig. 2Patient experience priority matrix for hospital 1. Topics to be improved, celebrated, monitored are show in the upper left, upper right and lower left quadrant, respectively