| Literature DB >> 30322049 |
Lorraine Johnson1, Mira Shapiro2, Jennifer Mankoff3.
Abstract
Lyme disease is caused by the bacteria borrelia burgdorferi and is spread primarily through the bite of a tick. There is considerable uncertainty in the medical community regarding the best approach to treating patients with Lyme disease who do not respond fully to short-term antibiotic therapy. These patients have persistent Lyme disease symptoms resulting from lack of treatment, under-treatment, or lack of response to their antibiotic treatment protocol. In the past, treatment trials have used small restrictive samples and relied on average treatment effects as their measure of success and produced conflicting results. To provide individualized care, clinicians need information that reflects their patient population. Today, we have the ability to analyze large data bases, including patient registries, that reflect the broader range of patients more typically seen in clinical practice. This allows us to examine treatment variation within the sample and identify groups of patients that are most responsive to treatment. Using patient-reported outcome data from the MyLymeData online patient registry, we show that sub-group analysis techniques can unmask valuable information that is hidden if averages alone are used. In our analysis, this approach revealed treatment effectiveness for up to a third of patients with Lyme disease. This study is important because it can help open the door to more individualized patient care using patient-centered outcomes and real-world evidence.Entities:
Keywords: Lyme disease; average treatment effect; big data; global rating of change scale; individualized care; patient registries; patient-centered research; patient-reported outcomes; real-world evidence; treatment heterogeneity
Year: 2018 PMID: 30322049 PMCID: PMC6316052 DOI: 10.3390/healthcare6040124
Source DB: PubMed Journal: Healthcare (Basel) ISSN: 2227-9032
Figure 1Preliminary sample, exclusions, and final sample size determination.
Demographic characteristics of respondents.
| Variable | Count (% of Working Sample) |
|---|---|
|
| |
| Female | 3250 (83%) |
| Mean age | 49 |
|
| |
| High school or less | 340 (9%) |
| Some college or associate degree | 1265 (34%) |
| Bachelor degree | 1139 (31%) |
| Graduate school degree | 945 (25%) |
|
| |
| <$25k | 485 (14%) |
| $25–50k | 542 (15%) |
| $50–75k | 547 (16%) |
| $75–100k | 408 (12%) |
| >$100k | 1025 (29%) |
|
| |
| East | 1274 (33%) |
| Midwest | 571 (15%) |
| South | 1021 (26%) |
| West | 1004 (26%) |
a 214 skipped or selected “prefer not to answer”. b 896 skipped or selected “prefer not to answer”. c Excludes 33 from a US territory or who did not indicate a state.
Current stage of illness and diagnostic characteristics of sample.
| Variable | Count (% of Working Sample) |
|---|---|
|
| |
| Chronic LD a | 61% |
| Late untreated LD b | 18% |
| Early Lyme disease c | 6% |
| Don’t know/Other | 15% |
|
| |
| Late untreated LD b | 70% |
| Early Lyme disease c | 22% |
| Don’t know/Other | 8% |
|
| |
| Clinician diagnosed (entry criteria for registry) d | 100% |
| Recollection of tick bite | 41% |
| Recollection of EM rash e | 34% |
| With supportive lab tests | 78% |
| 1 or more coinfection | 60% |
| Self-reported health status as fair or poor | 65% |
| Disabled (with or without disability benefits) | 32% |
a Remained ill for six months or more after treatment with antibiotics for 10–21 days. b Diagnosed and untreated for six months or more after symptom onset. c “Within days to weeks after my tick bite or exposure, I experienced symptoms associated with Lyme disease”. d To be enrolled, patients must have self-reported US residency and diagnosis by a healthcare provider. e Because of a branching error in the initial survey, patients were re-asked this question. This data includes the 1190 who responded to the revised question.
Degree of change reported on global rating of change scale.
| Better/Worse/Unchanged | Degree of Change | Likert Score | Assigned Group | |
|---|---|---|---|---|
|
| Hardly better at all | 1 | 43 (1.22) | Low Responders |
| A little better | 2 | 269 (7.61) | Low Responders | |
| Somewhat better | 3 | 298 (8.43) | Low Responders | |
| Total | 17.26% | Low Responders | ||
| Moderately better | 4 | 295 (8.34) | High Responders | |
| A good deal better | 5 | 450 (12.73) | High Responders | |
| A great deal better | 6 | 289 (8.17) | High Responders | |
| A very great deal better | 7 | 191 (5.40) | High Responders | |
| Total | 34.64% | High Responders | ||
| Total Better | 51.9% | |||
|
| 0 | 1293 (36.57) | Nonresponders | |
|
| A very great deal worse | −7 | 64 (1.81) | Nonresponders |
| A great deal worse | −6 | 64 (1.81) | Nonresponders | |
| A good deal worse | −5 | 85 (2.40) | Nonresponders | |
| Moderately worse | −4 | 71 (2.01) | Nonresponders | |
| Somewhat worse | −3 | 66 (1.87) | Nonresponders | |
| A little worse | −2 | 35 (0.99) | Nonresponders | |
| Hardly worse at all | −1 | 23 (0.65) | Nonresponders | |
| Total Worse | 11.54% | Nonresponders | ||
|
| 100% |
a Includes “almost the same” (better/worse).
Figure 2The majority of participants (51%) reported some improvement in their condition after treatment with antibiotics, with High Treatment Responders constituting 34% of participants. Approximately 37% reported their condition as unchanged. Only 12% reported their condition as worse. Slight deviation in the percentages in the figure from the text reflect rounding errors.
Figure 3Average treatment effect, high responders, and nonresponders on global rating of change (GROC) scale shows heterogeneous treatment response among participants that average treatment effect masks.
Figure 4Research in Lyme disease is sparse compared to other infectious diseases. (Derived from Goswami 2013 [10]).
Research trials for chronic Lyme disease are small and highly selective compared to patient-generated big data studies.
| Study Type | Trial | Screened | Enrolled | Yield | Time to Recruit |
|---|---|---|---|---|---|
| RCT * | Klempner (2001) | 1996 | 129 | 7% | 3.3 years |
| RCT | Krupp (2003) | 512 | 56 | 11% | 2.5 years |
| RCT | Fallon (2008) | 3368 | 37 | 1% | 4 years |
| Big Data | Johnson (2014) | 5357 | 3090 | 58% | 6 months |
* Randomized controlled trial [5,16,17,18].
Figure 5(left) Treatment effects of nonrepresentative samples cannot be generalized to the full spectrum of disease; (right) In addition, within any given sample, individual patient treatment response varies from mean. (Derived from Kravitz 2004).