| Literature DB >> 28241760 |
Herbert S Chase1, Lindsey R Mitrani2, Gabriel G Lu2, Dominick J Fulgieri2.
Abstract
BACKGROUND: Diagnostic accuracy might be improved by algorithms that searched patients' clinical notes in the electronic health record (EHR) for signs and symptoms of diseases such as multiple sclerosis (MS). The focus this study was to determine if patients with MS could be identified from their clinical notes prior to the initial recognition by their healthcare providers.Entities:
Keywords: Computer-assisted [E01.158]; Diagnosis; Diagnostic errors [E01.354]; Early Diagnosis [E01.390]; Electronic health records [E05.318.308.940.968.249.500]; Natural language processing [L01.224.050.375.580]; multiple sclerosis [C10.114.375.500]
Mesh:
Year: 2017 PMID: 28241760 PMCID: PMC5329909 DOI: 10.1186/s12911-017-0418-4
Source DB: PubMed Journal: BMC Med Inform Decis Mak ISSN: 1472-6947 Impact factor: 2.796
Two cohorts used for MS classification study
| Cohort | Purpose | Unique Patients | |
|---|---|---|---|
| MS-enriched | Identify predictive attributes, develop a classification model, and determine the achievability of early recognition | MS | 165 |
| Controls | 545 | ||
| Random sample | Identify patients with unrecognized MS | MS | 16 |
| Controls | 2273 | ||
Fig. 1Timing of clinical notes used in classification studies. For MS patients in the MS-enriched set, the notes used were written either before or after the entry of first ICD9 code for MS (IDC9[MS]). For control patients in the MS-enriched set and the Random sample set, the notes used were those entered within the last two years of the most recent note
Buckets of MS-related UMLS terms used as attributes for MS classification. For each bucket, the frequency of terms in MS patients was compared to controls. The significance of the difference was measured by Chi squared analysis (in parenthesis). Buckets are grouped by common symptoms of loss of function
| BUCKET | SYMPTOM GROUP | |
|---|---|---|
| 1 | Bladder dysfunction (115.8) |
|
| 2 | Constipation (22.4) | |
| 3 | Memory (46.4) |
|
| 4 | Cognitive (19.4) | |
| 5 | Ataxia (48.0) |
|
| 6 | Balance (77.1) | |
| 7 | Cerebellar (25.0) | |
| 8 | Coordination (89.5) | |
| 9 | Dizziness (29.9) |
|
| 10 | Vertigo (17.2) | |
| 11 | Diplopia (43.8) |
|
| 12 | Nystagmus (48.6) | |
| 13 | Optic neuritis (79.2) | |
| 14 | Orbital pain (30.0) | |
| 15 | Vision (88.9) | |
| 16 | Fatigue (30.7) |
|
| 17 | Weak (189.0) | |
| 18 | Headache (65.8) |
|
| 19 | Migraine (22.5) | |
| 20 | Depression (24.2) |
|
| 21 | Mood (36.5) | |
| 22 | Pain-musculoskeletal (12.1) |
|
| 23 | Pain-other (7.3) | |
| 24 | Atrophy (46.5) |
|
| 25 | Contracture (19.5) | |
| 26 | Dysphagia (23.4) | |
| 27 | Motor (59.6) | |
| 28 | Paresis (87.5) | |
| 29 | Reflex (50.6) | |
| 30 | Spastic (76.9) | |
| 31 | Speech (126.7) | |
| 32 | Stiffness (35.6) | |
| 33 | Burning (20.0) |
|
| 34 | Lhermitte’s sign (11.0) | |
| 35 | Neuritis (82.8) | |
| 36 | Numbness (93.2) | |
| 37 | Paresthesia (59.6) | |
| 38 | Sensory (67.9) | |
| 39 | Tingling (94.5) | |
| 40 | Epilepsy (13.3) |
|
| 41 | Palsy (13.8) | |
| 42 | Seizures (33.9) | |
| 43 | Tremor (12.9) | |
| 44 | Fall (57.3) |
|
| 45 | Gait (79.2) | |
| 46 | Walk (45.8) | |
| 47 | Hearing loss (9.0) |
|
| 48 | Neurologic (43.4) | |
| 49 | Neuropathy (22.1) | |
| 50 | Sleep (12.6) |