| Literature DB >> 27560380 |
Nicola White1, Fiona Reid2, Adam Harris3, Priscilla Harries4, Patrick Stone1.
Abstract
BACKGROUND: Prognostic accuracy in palliative care is valued by patients, carers, and healthcare professionals. Previous reviews suggest clinicians are inaccurate at survival estimates, but have only reported the accuracy of estimates on patients with a cancer diagnosis.Entities:
Mesh:
Year: 2016 PMID: 27560380 PMCID: PMC4999179 DOI: 10.1371/journal.pone.0161407
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1PRISMA study flowchart.
Papers included in the review.
| First Author | Disease | Number of estimates | How accurate are clinicians? | Are some clinicians more accurate than others? | |||
|---|---|---|---|---|---|---|---|
| Categorical | Continuous | Probabilistic | Categorical | Continuous | |||
| Addington-Hall [ | Any | 1128 | X | X | |||
| Brandt [ | Any | 511 | X | ||||
| Bruera [ | Cancer | 94 | X | X | |||
| Buchan [ | Any | 13 | X | ||||
| Casarett [ | Any | 21074 | |||||
| Fromme [ | Any | 429 | X | ||||
| Glare [ | Cancer | 44 | X | ||||
| Glare & Virik [ | Any | 100 | X | ||||
| Gripp [ | Cancer | 580 | X | X | |||
| Gwilliam [ | Cancer | 987± | X | X | |||
| Holmebakk [ | Cancer | 243 | X | X | |||
| Kao [ | Cancer | 50 | X | ||||
| Llobera [ | Cancer | 600 | X | X | |||
| Muers [ | Cancer | 203 | X | X | |||
| Selby [ | Any | 36 | X | ||||
| Shah [ | Any | 248 | X | ||||
| Stiel [ | Any | 82 | X | ||||
| Twomey [ | Any | 126 | |||||
| Vigano [ | Cancer | 233 | X | X | |||
| Zibelman [ | Any | 273 | X | ||||
| Thomas [ | Multiple | 254 | X | ||||
| Chow [ | Cancer | 739 | X | X | |||
| Chritakis [ | Any | 468 | X | X | |||
| Evans [ | Cancer | 149 | X | ||||
| Faris [ | Cancer | 162 | X | ||||
| Forster [ | Any | 540 | X | X | |||
| Heyse-Moore [ | Cancer | 50 | X | X | |||
| Higginson [ | Cancer | 275 | X | ||||
| Lamont [ | Cancer | 300 | X | ||||
| Maltoni, ‘94 [ | Cancer | 100 | X | X | |||
| Maltoni, ‘95 [ | Cancer | 530 | X | ||||
| Morita [ | Cancer | 150 | |||||
| Oxenham [ | Any | 30 | X | X | |||
| Parkes [ | Cancer | 74 | X | X | |||
| Lam [ | Cancer | 167 | X | ||||
| Mackillop [ | Cancer | 39 | |||||
| Taniyama [ | Cancer | 75 | X | ||||
| Fairchild [ | Cancer | 395 | X | X | X | ||
| Hui [ | Cancer | 127 | X | X | X | X | X |
| Cooper [ | Liver Disease | 456 | X | ||||
| Knaus [ | Any | 4028 | X | ||||
| Weeks [ | Cancer | 917 | X | ||||
*was originally all diseases but only cancer patients included in the analysis
**Cancer, COPD, Heart Failure
† Not included in analysis, narratively described ± Estimates from MDT data only
Summary of studies in which clinicians were asked to predict survival using defined categories (categorical studies).
| First Author | Number of categories | Description of categories |
|---|---|---|
| Addington-hall, 1990 | 2 | < or > 1 year |
| Bruera, 1992 | 2 | < or > 4 weeks |
| Buchan, 1995 | 2 | Is death imminent? (yes/no) |
| Casarett, 2012 | 2 | Is death imminent? (yes/no) |
| Shah, 2006 | 2 | “Good prognoses” (> 1 year) and “Poor prognoses” (< 12 months) |
| Brandt, 2006 | 3 | Within 1 week (0–7 days); death within 1–3 weeks (8–21 days); and death within 4–6 weeks (22–42 days). |
| Gripp, 2007 | 3 | < 1 month; 1–6 months; > 6 months |
| Muers, 1994 | 3 | < 3 months; 3–9 months; >9 months |
| Vigano,1999 | 3 | < 2 months; 2–6 months; >6 months |
| Gwilliam, 2013 | 3 | ‘Days’ (< 14 days); ‘Weeks’ (2 weeks to less than 8 weeks); ‘Months or Years’ (≥ 2 months). |
| Fromme, 2010 | 4 | <3 days; 4 days to 1 month; >1 month to 6 months; >6 months. |
| Fairchild, 2014 | 4 | Days; Weeks; Months; Years |
| Llobera, 2000 | 4 | < 30 days; 31–90 days; 91–180 days; > 180 days |
| Kao, 2011 | 5 | Weeks; Months; 1 year; < 2 years, > 2 years |
| Zibelman, 2014 | 5 | Hours–Days: < 4 days; Days–Weeks: 4–30 days; Weeks–Months: 31–180 days; Months–Years: >181 days; Nonspecific or no time frame given |
| Glare, 2004 | 6 | If prognosis was believed to be < 3 months; then asked to express the prognosis in 2-week intervals, up to a maximum of 12 weeks |
| Glare, 2001 | 6 | 1–2 weeks; 3–4 weeks; 5–6 weeks; 7–10 weeks; 11–12 weeks; > 12 weeks. |
| Twomey, 2008 | 6 | < 24 hours; > 24 hours but < 72 hours; > 72 hours but < 10 days; > 10 days but < one month; > one month but < three months; > three months |
| Stiel, 2010 | 7 | 1–2 weeks, 3–4 weeks, 5–6 weeks, 7–8 weeks, 9–10 weeks, 11–12 weeks, > 12 weeks |
| Hui, 2011 | 7 | 24 hours; 48 hours; 1 week; 2 weeks; 1 month; 3 months; 6 months. |
| Selby, 2011 | 7 | < 24 hours; 1–7 days; 1–4 weeks; 1–3 months; 3–6 months; 6–12 months; > 12 months |
| Thomas, 2009 | 7 | < 1 month; 1–6 months; 7–12 months; 13–23 months; 2–5 years; 6–10 years; > 10 years |
| Holmebakk, 2011 | 8 | < 1 week; 1–4 weeks; 1–3 months; 3–6 months; 6–9 months; 9–12 months; 12–18 months; 18–24 months |
† This study appears in other table
Fig 2Summary data from studies in which clinicians provided categorical survival estimates (grouped by number of categories).
The data represented is the percentage of accurate estimates given out of the total number of estimates given. Note: The study by Gwilliam et al (2013) included doctor, nurse and MDT estimates. However, since the estimates were not independent of each other, only the MDT estimates have been presented here.
Predicted versus actual survival in those studies where clinicians were asked to provide a continuous temporal estimate of survival (continuous studies).
| First Author | Number of prognostic Estimates | Predicted survival in days (median) | IQR | Actual survival in days (median) | IQR | Difference between predicted and actual survival |
|---|---|---|---|---|---|---|
| Chow, 2005 | 739 | 25 | nr | 111 | nr | -86 |
| Christakis, 2000 | 468 | 77 | 28–133 | 24 | 12–58 | 53 |
| Evans, 1985 | 149 | 81 | 28–182 | 21 | 43–180 | 60 |
| Fairchild, 2014 | 395 | 219 | nr | 126 | nr | 93 |
| Faris, 2003 | 162 | 21 | 45–135 | 10 | nr | 11 |
| Forster, 1988 | 540 | 46 | nr | 24 | nr | 22 |
| Heyse-Moore, 1987 | 50 | 56 | 33–84 | 14 | 7–28 | 42 |
| Lam, 2008 | 167 | 70 | 43–137 | 76 | 30–160 | -6 |
| Lamont, 2001 | 300 | 75 | nr | 26 | nr | 49 |
| Maltoni, 1994 | 100 | 42 | nr | 35 | nr | 7 |
| Maltoni, 1995 | 530 | 42 | 28–70 | 32 | 13–62 | 10 |
| Muers, 1996 | 203 | 36 | 21–82 | 38 | 22–85 | -2 |
| Oxenham, 1998 | 30 | 21 | 14–35 | 17 | 9–25 | 4 |
| Parkes, 1972 | 74 | 28 | 24–56 | 21 | 9–34 | 7 |
| Taniyama, 2014 | 75 | 120 | 60–180 | 121 | 40–234 | -1 |
| Higginson a, 2002 | 275 | 28 | 10–32 | 42 | nr | -14 |
| Higginson b, 2002 | 84 | 176–516 | nr | 42 | ||
| Hui a, 2011 | 127 | 14 | nr | 12 | nr | 2 |
| Hui b, 2011 | 127 | 20 | nr | 12 | nr | 8 |
Higginson a: upper estimate Higginson b: lower estimate.
Hui a: Doctors, Hui b: Nurse
† Data extracted from previous review [11]
nr: not reported
IQR: Interquartile Range
† This study appears in other tables
Fig 3Professional Error Score (PES) of clinicians’ estimates of survival those studies where clinicians were asked to provide a continuous temporal estimate of survival.
The black bar in this figure indicates the overall accuracy of the clinicians’ estimates (0 indicates perfect accuracy, positive values indicate over-estimates and negative values indicate under-estimates).
Summary of studies investigating differences in prognostic accuracy between clinical groups.
| First Author | Estimate | Professional groups | Description of clinician-level factors | Main findings |
|---|---|---|---|---|
| Addington-Hall (1990) | Categorical | Doctors; Nurses | Job title | No difference |
| Bruera (1992) | Categorical | Doctors | 2 Doctors “highly experienced and dedicated to full time management of patients with advanced cancer” | No difference |
| Chow (2005) | Continuous | Radiation Oncologists | Years of experience | No difference; inaccurate and tended to be overly optimistic. |
| Christakis (2000) | Continuous | Doctors | Job title; Self-rated optimism; years of experience; gender; board certified; length of time known patient; contact time with patient; number of referrals to hospice | Overall, not very accurate. Experience decreases risk of optimistic and pessimistic errors. |
| Fairchild (2014) | Both | Doctors; Radiation therapist; Nurses; Allied health professionals | Job title | Radiation therapists more accurate than allied health professionals. |
| Forster (1988) | Continuous | Consulting oncologist; General Internist; Hospice social worker; Community oncologist; Nurse | Job title | Registered nurse and consulting university oncologist were more accurate but still overly optimistic |
| Gripp (2007) | Categorical | Doctors; Experienced Physician; Tumour Board | Years of experience | No difference. |
| Gwilliam (2013) | Categorical | Doctors; Nurses; MDTs | Age; Gender; Length of time qualified; Length of time working in palliative care; Time known patient; Time since last assessed patient | No difference between doctors’ and nurses’ accuracy. MDTs more accurate than a nurse alone. Nurses’ accuracy better when patient reviewed within previous 24 hours |
| Heyse-Moore (1987) | Continuous | Hospital Doctors; GPs | Job title | No inferences made about groups in paper, but data shows GP slightly better |
| Holmebakk (2011) | Categorical | Surgeons | Years of experience | No difference. |
| Hui (2011) | Both | Doctors; Nurses | Age; Gender; Ethnicity; Religion; Years of experience; Years of palliative experience | With probabilistic prediction, nurses more accurate with 24 hour and 48 hour time points. |
| Llobera (2000) | Categorical | Oncologists; Nurses; GP | Job title | Oncologists and nurses are more accurate than GP |
| Maltoni (1994) | Continuous | Oncologists | Years of Experience | The more experienced oncologists were more accurate |
| Oxenham (1998) | Continuous | Doctor; Sister; Staff Nurse; Chaplain; Auxiliary | Job title | Auxiliary most accurate with imminent death |
| Parkes (1972) | Categorical | Referring Doctor; Referring GP; Doctors; Nurses. | Job title | No difference. |
| Twomey (2008) | Categorical | Consulting university oncologist; General Internist Hospice social worker; Community oncologist; Registered Nurse | Job title | No group accurately predicted the length of patient survival more than 50% of the time. Nursing and junior medical staff were most accurate while care assistants were least accurate. When in error, senior clinical staff tended to under estimate survival. |
| Vigano (1999) | Categorical | Oncologists | Job title | No difference |