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Deadliest outside the big cities Though the majority of Russia's coronavirus cases have been recorded in Moscow, demographic and epidemiological data suggest more remote areas are most vulnerable. We mapped it.

Source: Meduza

Based on data available on March 28, most of Russia’s confirmed COVID-19 cases were in Moscow, the Moscow region, and St. Petersburg. This is unsurprising: national capitals everywhere have taken the first blow in this pandemic because they’re the most connected to international travel. The media’s focus on megapolises can be misleading, however, insofar as it creates the impression that coronavirus has somehow spared more remote areas. That is not the case. Given the age demographics of many regions in Russia, it is outside Moscow and St. Petersburg where we can expect to see the most difficult situations, both in terms of the number of patients needing assistance and the number of deaths. At Meduza’s request, demographer Ilya Kashnitsky and epidemiologist Anton Barchuk compared Russia’s regions by the number of people who could need hospitalization and the amount of locally available medical resources. The two experts created an interactive map that helps doctors in Russia assess the seriousness of the COVID-19 crisis in different parts of the country and makes it clear how important it is to delay the epidemic’s peak by as long as possible (to “flatten the curve”).


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With COVID-19, the disease caused by the new coronavirus, the risks of complications, hospitalization, need for intensive care, and death are distributed extremely unevenly by age. Children and younger people are nearly out of danger, but the risks are significant for older generations. Additionally, at any age, the disease is more dangerous for men than women. The figure below demonstrates COVID-19’s lethality in Italy as of late March.

Istituto Superiore di Sanità. (2020, March 26). Integrated surveillance of COVID-19 in Italy. https://www.epicentro.iss.it/coronavirus/sars-cov-2-sorveglianza-dati

Populations’ age structures vary widely between different countries and between different regions within the same country. Given COVID-19’s uneven lethality indexes for age and sex, the logical conclusion, other things being equal, is that severe cases will be greater in relatively more elderly populations. In part, we see the effect of a population’s age structure in the pandemic’s first comparative data by country: the number and proportion of severe cases of the illness are much higher in Italy than in places like South Korea, where the population is relatively younger. We can observe even more significant differences in populations’ age structure between central and peripheral regions within specific European countries. The epidemic naturally begins in the most densely populated major cities. Once the disease is widespread, however, peripheral regions (where populations are generally older) are the most vulnerable. 

On the interactive map below, you can see the total number of people in different regions across Russia who could need intensive care at some point during the coronavirus epidemic. The darker the shading, the greater the proportion of severe COVID-19 cases in a region’s population. Below the map, you can find the same information laid out in a table.

Развернуть

Region

40%

50%

60%

70%

80%

Altai Krai

13672

17088

20507

23925

27343

Amur Oblast

3807

4759

5711

6666

7615

Arkhangelsk Oblast

6346

7932

9520

11105

12691

Astrakhan Oblast

5524

6906

8286

9667

11048

Belgorod Oblast

9536

11916

14300

16683

19066

Bryansk Oblast

7433

9294

11152

13011

14866

Vladimir Oblast

8751

10939

13124

15314

17502

Volgograd Oblast

15723

19653

23583

27516

31446

Vologda Oblast

6602

8256

9905

11555

13207

Voronezh Oblast

15284

19107

22926

26749

30571

Jewish Autonomous Oblast

762

954

1144

1334

1526

Zabaykalsky Krai

4559

5701

6841

7979

9118

Ivanovo Oblast

6380

7975

9570

11165

12761

Ingushetia

1525

1903

2286

2668

3050

Irkutsk Oblast

11628

14536

17444

20350

23258

Kabardino-Balkarian Republic

4037

5045

6055

7067

8072

Kaliningrad Oblast

5573

6968

8361

9753

11148

Kaluga Oblast

6293

7863

9441

11013

12586

Kamchatka Krai

1366

1708

2052

2392

2733

Karachay-Cherkessia

2386

2982

3578

4177

4773

Kemerovo Oblast

14641

18301

21960

25624

29282

Kirov Oblast

8013

10017

12020

14023

16028

Kostroma Oblast

3877

4845

5814

6782

7753

Krasnodar Krai

33657

42074

50485

58900

67316

Krasnoyarsk Krai

14195

17746

21294

24843

28392

Kurgan Oblast

5313

6641

7971

9298

10627

Kursk Oblast

7003

8756

10508

12257

14009

Leningrad Oblast

11454

14315

17178

20041

22903

Lipetsk Oblast

7225

9038

10843

12651

14456

Magadan Oblast

603

751

900

1054

1202

Moscow

83861

104830

125792

146758

167724

Moscow Oblast

42153

52693

63228

73769

84309

Murmansk Oblast

3400

4250

5100

5951

6799

Nenets Autonomous Okrug

172

214

258

301

342

Nizhny Novgorod Oblast

19795

24741

29694

34641

39589

Novgorod Oblast

3875

4845

5810

6781

7749

Novosibirsk Oblast

15384

19228

23077

26920

30766

Omsk Oblast

10531

13162

15795

18427

21063

Orenburg Oblast

10877

13596

16314

19032

21755

Oryol Oblast

4737

5922

7108

8292

9476

Penza Oblast

8703

10883

13058

15235

17410

Perm Krai

13928

17409

20893

24374

27854

Primorsky Krai

10215

12767

15323

17875

20427

Pskov Oblast

4085

5105

6127

7149

8171

Adygea Republic

2651

3317

3979

4642

5304

Altai Republic

842

1051

1264

1474

1684

Republic of Bashkortostan

21819

27269

32724

38178

43633

Buryatia

4247

5311

6369

7431

8494

Republic of Dagestan

10477

13094

15713

18331

20952

Kalmykia Republic

1297

1623

1946

2271

2598

Republic of Karelia

3583

4479

5376

6271

7168

Komi Republic

3889

4862

5833

6806

7779

Republic of Crimea

11947

14936

17920

20908

23896

Mari El Republic

3688

4610

5531

6455

7377

Mordovia Republic

4899

6126

7350

8578

9803

Sakha Republic

3455

4322

5183

6046

6913

North Ossetia–Alania Republic

3866

4828

5797

6762

7729

Republic of Tatarstan

21702

27125

32550

37974

43398

Tuva Republic

784

982

1179

1377

1572

Republic of Khakassia

2621

3277

3932

4587

5244

Rostov Oblast

25888

32359

38830

45305

51773

Ryazan Oblast

7645

9557

11470

13382

15292

Samara Oblast

19128

23906

28692

33475

38255

St. Petersburg

33965

42457

50948

59440

67927

Saratov Oblast

15278

19098

22918

26740

30556

Sakhalin Oblast

2327

2904

3484

4067

4648

Sverdlovsk Oblast

24177

30221

36267

42308

48352

Sevastopol

2706

3382

4059

4735

5416

Smolensk Oblast

5794

7245

8695

10144

11591

Stavropol Krai

15689

19608

23531

27452

31375

Tambov Oblast

7066

8830

10597

12364

14129

Tver Oblast

8241

10304

12364

14425

16484

Tomsk Oblast

5421

6780

8134

9488

10846

Tula Oblast

10091

12614

15134

17659

20179

Tyumen Oblast

7131

8915

10696

12478

14262

Udmurt Republic

7901

9876

11850

13826

15802

Ulyanovsk Oblast

7836

9796

11754

13714

15672

Khabarovsk Krai

6537

8170

9805

11439

13072

Khanty-Mansi Autonomous Okrug

5343

6679

8014

9349

10690

Chelyabinsk Oblast

19694

24623

29544

34472

39394

Chechnya

3372

4214

5059

5905

6746

Chuvashia Republic

6912

8637

10367

12094

13821

Chukotka Autonomous Okrug

146

183

218

253

290

Yamalo-Nenets Autonomous Okrug

1311

1641

1965

2293

2624

Yaroslavl Oblast

7954

9942

11930

13916

15905


In the event of an uncontrolled or poorly controlled outbreak, the number of seriously ill patients very quickly exceeds the number of available hospital beds. This is especially true for space in intensive care units equipped with ventilators. In this scenario, more remote regions are again the most vulnerable. 

The map below demonstrates a situation where 40 percent of Russia’s population contracts COVID-19 and the epidemic’s peak arrives after five, 10, or 20 weeks. In reality, this timeframe will depend on the effectiveness of Russia’s containment measures. The map displays the predicted number of people in intensive care in each region of the country per available ventilator.

Развернуть

Region

10 weeks

20 weeks

40 weeks

Altai Krai

2

0.89

0.44

Amur Oblast

1.39

0.63

0.35

Arkhangelsk Oblast

1.18

0.54

0.3

Astrakhan Oblast

2.72

1.17

0.62

Belgorod Oblast

3.68

1.68

0.86

Bryansk Oblast

4.66

2.18

1.14

Vladimir Oblast

2.47

1.07

0.57

Volgograd Oblast

3.52

1.62

0.83

Vologda Oblast

2.69

1.21

0.6

Voronezh Oblast

5.03

2.23

1.14

Jewish Autonomous Oblast

0.96

0.48

0.27

Zabaykalsky Krai

1.68

0.82

0.42

Ivanovo Oblast

3.1

1.37

0.74

Ingushetia

4.52

1.94

1.15

Irkutsk Oblast

2.12

0.97

0.46

Kabardino-Balkarian Republic

2.64

1.13

0.66

Kaliningrad Oblast

2.07

0.94

0.48

Kaluga Oblast

7.08

2.92

1.61

Kamchatka Krai

1.74

0.81

0.45

Karachay-Cherkessia

2.38

1.11

0.58

Kemerovo Oblast

2.41

1

0.52

Kirov Oblast

1.84

0.84

0.45

Kostroma Oblast

2.53

0.99

0.57

Krasnodar Krai

3.96

1.74

0.88

Krasnoyarsk Krai

2.03

0.92

0.48

Kurgan Oblast

7.41

3.52

1.95

Kursk Oblast

2.11

0.92

0.54

Leningrad Oblast

3.93

1.78

0.86

Lipetsk Oblast

2.06

0.88

0.49

Magadan Oblast

1.32

0.67

0.37

Moscow

1.53

0.65

0.33

Moscow Oblast

2.17

0.92

0.47

Murmansk Oblast

1.32

0.54

0.31

Nenets Autonomous Okrug

1.04

0.5

0.38

Nizhny Novgorod Oblast

3.37

1.47

0.8

Novgorod Oblast

3.67

1.7

0.92

Novosibirsk Oblast

1.81

0.8

0.43

Omsk Oblast

3.43

1.46

0.79

Orenburg Oblast

2.39

1.07

0.54

Oryol Oblast

1.6

0.73

0.38

Penza Oblast

2.48

1.12

0.58

Perm Krai

2.25

0.92

0.52

Primorsky Krai

3.2

1.41

0.71

Pskov Oblast

2.72

1.12

0.62

Adygea Republic

2.96

1.38

0.81

Altai Republic

0.65

0.35

0.17

Republic of Bashkortostan

3.34

1.42

0.75

Buryatia

2.11

0.95

0.51

Republic of Dagestan

6.24

2.86

1.52

Kalmykia Republic

2.67

1.38

0.72

Republic of Karelia

2.13

0.91

0.52

Komi Republic

1.68

0.74

0.39

Republic of Crimea

1.99

0.88

0.47

Mari El Republic

1.5

0.67

0.37

Mordovia Republic

4.44

2.13

1.12

Sakha Republic

1.16

0.52

0.27

North Ossetia–Alania Republic

2.49

1.14

0.58

Republic of Tatarstan

1.59

0.66

0.35

Tuva Republic

0.58

0.26

0.17

Republic of Khakassia

1.62

0.74

0.48

Rostov Oblast

4.03

1.78

0.93

Ryazan Oblast

3.02

1.29

0.75

Samara Oblast

2.42

0.98

0.55

St. Petersburg

1.68

0.73

0.37

Saratov Oblast

3.29

1.42

0.77

Sakhalin Oblast

0.94

0.44

0.24

Sverdlovsk Oblast

2.58

1.09

0.57

Sevastopol

2.13

1.03

0.54

Smolensk Oblast

6.22

2.84

1.46

Stavropol Krai

0.8

0.36

0.19

Tambov Oblast

1.08

0.49

0.25

Tver Oblast

4.54

2.03

1.05

Tomsk Oblast

1.52

0.71

0.38

Tula Oblast

3.94

1.74

0.92

Tyumen Oblast

1.36

0.6

0.33

Udmurt Republic

3.15

1.29

0.72

Ulyanovsk Oblast

6.99

3.07

1.59

Khabarovsk Krai

2.56

1.11

0.59

Khanty-Mansi Autonomous Okrug

0.58

0.26

0.15

Chelyabinsk Oblast

2.9

1.25

0.68

Chechnya

2.58

1.16

0.6

Chuvashia Republic

1.93

0.83

0.46

Chukotka Autonomous Okrug

1.92

0.83

0.67

Yamalo-Nenets Autonomous Okrug

0.97

0.54

0.27

Yaroslavl Oblast

2.36

1.08

0.55


How we counted (methodological details for specialists)

In our calculations, we used available data on Russia’s current sex and age demographics. The proportion of people expected to need intensive care corresponds to projections adopted in a report published on March 19, 2020, by the Imperial College COVID-19 Response Team, titled “Impact of Non-Pharmaceutical Interventions (NPIs) to Reduce COVID-19 Mortality and Healthcare Demand.” These data, in turn, were obtained by modeling and analyzing statistics from China. The proportions were adjusted for the differences in COVID-19’s fatality risks for men and women observed in Italy.

It is very difficult now to estimate the proportion of people who may be infected during the current epidemic, so we modeled multiple scenarios, assuming that the disease will spread to between 40 and 80 percent of Russia’s population. The actual value here will depend on the Rₒ coefficient, which reflects the number of people in the vulnerable population who are infected on average by one carrier of the disease. Our calculations did not take into account differences in the proportion of infected people between different age groups. In reality, the proportion of infected people in Russia could be lower in older age groups because older people generally have fewer social contacts.

To estimate the number of available ventilators in Russia, we used data obtained from public procurement contracts issued between 2017 and 2020 and public contracts for the comprehensive maintenance of medical equipment in 2019 and 2020. To assess the presence of this machinery at facilities where we could not find published contract records, we looked at the distribution of medical apparatuses by device-age/depreciation, the size of surgical departments and intensive care units, and a comparative analysis of the availability of other types of intensive-care equipment. All data about ventilators were provided by the Moscow-based “Headway Company,” and we also used some open-source information.

To calculate the epidemic’s peak surge, we relied on a spreadsheet-based model provided by the Centers for Disease Control and Prevention in the United States, which estimates the surge in demand for hospital-based services during the next influenza pandemic. We modeled three scenarios for the spread of COVID-19, where the peak occurs at the fifth, 10th, and 20th week after the outbreak’s start, and assumed that the average ICU stay is five days. 

In the event of a rapid and effective implementation of measures to contain the epidemic, the peak surge in demand for ICU space will be significantly lower than in the absence of such measures. According to our calculations, should the epidemic peak as soon as its fifth week, the number of patients requiring intensive care will be more than the number of ventilators in most regions across Russia. If Russia is able to “flatten” its epidemiological curve, delaying the COVID-19 peak to the epidemic’s 20th week, there will be sufficient medical resources to treat patients in almost all regions nationwide.

The peak surge per individual ventilator is largely a provisional value — it should be understood foremost as a way to compare regions, taking into account their medical resources and expected numbers of severe COVID-19 cases. The actual peak surge in different regions will depend on many parameters that are very hard to assess now, such as the number of infections, the epidemic’s length, and the timing of the peak surge — all of which are determined by the extent and effectiveness of containment measures.

In real-world conditions, the peak surge will also depend greatly on the use of available medical equipment and resources. Not all ventilators are located at facilities that are likely to get many severe cases of COVID-19. On the other hand, some ventilators can work on multiple patients simultaneously. 

The number of COVID-19 patients we expect to need intensive care in Russia coincides largely with a forecast by Sofia Garushyants and Georgy Bazykin, whose methodology is similar to ours. The differences between our forecasts are due primarily to the fact that our study takes into account the proportion of men and women in Russia’s population. Because the number of more elderly men in most regions is far lower than older women, the number of COVID-19 patients requiring intensive care in these areas will also be lower.

All the source data and code used to make the calculations found above are available here on GitHub.

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Written by Ilya Kashnitsky, a postdoc at Interdisciplinary Center on Population Dynamics, University of Southern Denmark and a junior research fellow in the Institute for Social Development Studies at the National Research University Higher School of Economics, and Anton Barchuk, a researcher at the University of Tampere in Finland and the Petrov National Cancer Center in St. Petersburg

Edited by Alexander Ershov and translated by Kevin Rothrock

Cover photo: Dmitry Feoktistov / TASS / Scanpix / LETA